Issue 
A&A
Volume 619, November 2018



Article Number  A179  
Number of page(s)  8  
Section  The Sun  
DOI  https://doi.org/10.1051/00046361/201833241  
Published online  22 November 2018 
Detection of spatially structured scattering polarization of Sr I 4607.3 Å with the Fast Solar Polarimeter
^{1} MaxPlanckInstitut für Sonnensystemforschung, 37077 Güttingen, Germany
email: zeuner@mps.mpg.de
^{2} GeorgAugustUniversität, FriedrichHundPlatz 1, 37077 Göttingen, Germany
^{3} School of Space Research, Kyung Hee University, Yongin, GyeonggiDo 446701, Republic of Korea
Received:
16
April
2018
Accepted:
3
August
2018
Context. Scattering polarization in the Sr I 4607.3 Å line observed with high resolution is an important diagnostic of the Sun’s atmosphere and magnetism at small spatial scales. Investigating the scattering polarization altered by the Hanle effect is key to constraining the role of smallscale magnetic activity in solar atmospheric activity and energy balance. At present, spatially resolved observations of this diagnostic are rare and have not been reported as close to the disk center as for μ = 0.6.
Aims. Our aim is to measure the scattering polarization in the Sr I line at μ = 0.6 and to identify the spatial fluctuations with a statistical approach.
Methods. Using the Fast Solar Polarimeter (FSP) mounted on the TESOS filtergraph at the German Vacuum Tower Telescope (VTT) in Tenerife, Spain, we measured both the spatially resolved full Stokes parameters of the Sr I line at μ = 0.6 and the centertolimb variation of the spatially averaged Stokes parameters.
Results. We find that the centertolimb variation of the scattering polarization in the Sr I line measured with FSP is consistent with previous measurements. A statistical analysis of Stokes Q/I (i.e., the linear polarization component parallel to the solar limb), sampled with 0.16″ pixel^{−1} in the line core of Sr I reveals that the signal strength is inversely correlated with the intensity in the continuum. We find stronger linear polarimetric signals corresponding to dark areas in the Stokes I continuum image (intergranular lanes). In contrast, independent measurements at μ = 0.3 show a positive correlation of Q/I with respect to the continuum intensity. We estimate that the subregion diameter responsible for the excess Q/I signal is on the order of 0.5″–1″.
Conclusions. The presented observations and the statistical analysis of Q/I signals at μ = 0.6 complement reported scattering polarization observations as well as simulations. The FSP has proven to be a suitable instrument to measure spatially resolved scattering polarization signals. In the future, a systematic centertolimb series of observations with subgranular spatial resolution and increased polarimetric sensitivity (<10^{−3}) compared to that in the present study is needed in order to investigate the change in trend with μ that the comparison of our results with the literature suggests.
Key words: Sun: photosphere / scattering / instrumentation: polarimeters
© ESO 2018
1. Introduction
The quiet solar photosphere is thought to be filled by smallscale and weak magnetic fields, as predicted by smallscale dynamo simulations of Vögler & Schüssler (2007) and Rempel (2014). To test this model, detailed measurements of the often weak magnetic field and its spatial distribution is required. However, observations draw an inhomogeneous picture on magnetic field strength, inclination and distribution, see Lagg et al. (2016), Stenflo (2011) and reviews on this topic by De Wijn et al. (2009), Steiner & Rezaei (2012) and Borrero et al. (2015). Observationally determining properties of fields weaker than a few hundred Gauss, which are tangled at spatial scales close to the observations’ spatial resolution is quite a challenge, as the Zeeman effect as a diagnostic tool has two major intrinsic disadvantages for extracting information about these fields. Firstly, the sensitivity to weak magnetic fields is low, particularly to the component perpendicular to the lineofsight, and secondly, if the magnetic field is turbulent, signal cancellation within a resolution element is possible. This makes it particularly difficult to probe the magnetic field’s properties in internetwork regions, as the results conspicuously depend on the method and spectral line employed, see e.g., Borrero et al. (2015). To a large extent, these disadvantages are overcome by employing the Hanle effect, see for example, Landi Degl’Innocenti & Landolfi (2004) and Stenflo (1994).
A photospheric line widely used for Hanle diagnostics is Sr I 4607.3 Å, which has the advantage of providing scattering signals at μ = 0.1 above 1% (see, e.g., Stenflo et al. 1997 and Gandorfer 2002). Here μ = cos(θ), where θ is the heliocentric angle and μ = 0 at the solar limb. So far, measurements with the required polarimetric sensitivity of the scattering polarization signals in this line suffer from insufficient spatiotemporal resolution (see Trujillo Bueno & Shchukina 2007 and references therein). Additionally, the observed target needs to be sufficiently far from the solar limb to confidently correlate the granulation pattern with the detected polarimetric signals for interpretation. Observations with a spatial resolution of about 0.6″ by Malherbe et al. (2007) at μ = 0.3 from the west limb display a positive correlation between the Stokes Q/I signal in the Sr I line core and continuum intensity. Their findings possibly hint at a Hanle effect acting in the intergranular regions where higher magnetic fields are expected, in agreement with simulations carried out by Trujillo Bueno et al. (2004). However, close to the disk center, Trujillo Bueno & Shchukina (2007) predicted theoretically that most of the scattering polarization is produced by local symmetry breaking of the radiation field by atmospheric inhomogeneities. In this case, the theoretically expected Q/I signal fluctuations lie between −0.08% and 0.9%, as they would be observed with a 1 m telescope and a spectral resolution of 25 mÅ at μ = 0.5, without considering a depolarizing magnetic field.
Here we present the results of two sets of observations carried out at the German Vacuum Tower Telescope (Tenerife, Spain) in the Sr I 4607.3 Å line taken with the Fast Solar Polarimeter (Iglesias et al. 2016) attached to the TESOS filtergraph (Kentischer et al. 1998; Tritschler et al. 2002). First we check if the data obtained with the Fast Solar Polarimeter are consistent with those in the literature by measuring the centertolimb variation of the linear polarization in Sr I and in a neighboring Fe I line that does not show scattering polarization. This centertolimb variation of the Q/I amplitude is compared with published results. In a second step, we use a statistical approach to analyze photonnoise limited spatial fluctuations of the Q/I signal at subgranular resolution and (1) search for a correlation between the Q/I amplitude in the line core and continuum intensity and (2) estimate the structure size of scattering polarization signals.
2. Observations and data reduction
Our observations were obtained with a prototype of the Fast Solar Polarimeter (FSP) mounted at the Vacuum Tower Telescope (VTT) at the El Teide observatory on Tenerife, using the TESOS FabryPérot tunable filtergraph. This particular prototype of FSP is composed of a fast, cooled pnCCD camera synchronized with a ferroelectric liquid crystal based polarization modulator. The image dimensions are 248 × 256 pixel^{2}. The sampling of 0.08″ pixel^{−1} corresponds to approximately critical sampling at the diffraction limit of the 0.68 m VTT aperture. The TESOS bandpass has a FWHM of about 25 mÅ (Beck et al. 2010). FSP is run with a polarization modulation frequency of 100 Hz, which corresponds to a frame rate of 400 frames s^{−1} (four modulation states per cycle). For more details of the FSP and the used modulation scheme see Iglesias et al. (2016). Calibration data, that is, dark images, a modulated flat field for all wavelength positions (moving the telescope randomly around disk center) and polarimetric calibration images were recorded within a few minutes of the observations.
2.1. Centertolimb variation of scattering polarization
2.1.1. Observations
On 6 May 2015 we observed quiet Sun regions at different limb distances between 17 and 19 UTC without using the adaptive optics (AO) system. We recorded the full Stokes vector at 11 wavelength positions, whereby the full record of all positions is called a scan: [−90, 90, −60, 60, −40, 40, −20, 20, −10, 10, 0] mÅ around a central wavelength. As central wavelengths we used λ_{c,Sr} = 4607.33 Å centered on the core of the Sr I line and λ_{c,Fe} = 4607.63 Å centered on the core of a neighboring Fe I line. Ten scans through the Sr I line were made, each at a different solar disk position, ranging between solar disk center and the solar north limb in steps of Δμ = 0.1. In this way we do not need to correct for Doppler shifts due to solar rotation. The Fe I line was scanned at μ = [1, 0.8, 0.27, 0.1]. At μ = 0.1 the solar limb is visible as a strong intensity drop in the upper part of the images. The individual scans took between 99 s and 106 s to complete and will be referred to as scan data hereinafter.
2.1.2. Data reduction
For a detailed description of the basic reduction steps, see Iglesias et al. (2016). The basic data reduction consists of three steps. They correct for offsets by subtracting a lownoise dark frame, image smearing, and common mode. The common mode signal is estimated from shielded pixels and subtracted from each semirow. The image smearing, caused by shutterfree operation of frametransfer CCD detectors, is corrected by using a modified standard model developed and implemented by Iglesias et al. (2015). After the basic reduction, 800 frames within each modulation state and wavelength position are averaged to a single image. The flat field and the scan data are corrected and averaged identically.
For polarimetric calibration, FSP recorded 19 predetermined polarization states, generated in front of the modulator. Therefore, instrumental polarization caused by optical elements of the telescope located in front of the modulator is excluded from the calibration. The measured intensities were used to fit the elements of the overdetermined 4 × 4 (de)modulation matrix. The demodulation matrix was then applied to the flat field and the scan data in the same way. The polarimetric calibration is described in detail by Iglesias et al. (2016).
The flat field and scan Stokes Q, U, V images were normalized to Stokes I. The flat field Q/I, U/I and V/I images were then subtracted from the respective scan data. This procedure was chosen to take into account artificial offsets in Q/I, U/I and V/I due to telescope polarization and to remove polarized fringes. As only very low polarization is expected in the continuum (Gandorfer 2002), we calculated spatial averages of the Q/I, U/I and V/I images taken at −90 mÅ and subtracted them as an offset from all wavelength points and corresponding polarization state images. A heuristic crosstalk removal was applied to correct the scan data for the uncalibrated telescope polarization, since there is no reliable telescope model available for the used wavelength range. We corrected for crosstalk between V/I and Q/I, as well as between V/I and U/I. This was done by rotating the whole FOV around the U and Q axes of the Poincaré sphere until the V/I signal was minimized. The estimated crosstalk with this method is (9 ± 2)% for V/I to Q/I, corrected by a 5° rotation around the U axis. For the crosstalk from V/I to U/I we estimated (57 ± 1)%, corrected with a 35° rotation around the Q axis. The direction of +Q/I is parallel to the north solar limb.
We then averaged all pixels for a given μ value and for one wavelength. Given that μ changes more rapidly over a given distance on an image with smaller μvalues, the image closest to the limb was divided into equally sized stripes of width 1.2″ that are parallel to the solar limb and the linear polarization within these stripes was averaged. The need for such narrow stripes is heightened by the fact that the Q/I amplitude also increases most rapidly close to the limb. The solar limb was defined as the part of the image where the slope of the intensity was steepest. Since the AO system was off, the limb position changed in the field of view per wavelength position and was therefore obtained for each wavelength position separately.
2.2. Spatially resolved Stokes measurements
2.2.1. Observations
Our spatially resolved Stokes measurements in the Sr I line were performed on May 27 2014 between 11 and 13 UTC. The AO was locked on a quiet Sun region at μ = 0.6 toward the north solar limb. Our FOV is 20″ by 20″. Five wavelength positions relative to 4607.3 Å ([−90, −60, 30, −30, 0] mÅ) were scanned. The exposure time was 1.25 s per modulation state and wavelength position for a single such scan, resulting in a total exposure time of 5 s per wavelength position. A single scan over all wavelengths required 32 s, implying a duty cycle of about 78%. In total, ten such scans were obtained.
2.2.2. Data reduction
The basic data reduction, the demodulation and normalization of the Stokes images were done as described in Sect. 2.1.2, including the flatfielding procedure. Because of this procedure, which requires demodulation before flatfielding, we were not able to make use of image restoration techniques to further increase the spatial resolution in the polarization Stokes images. From the demodulation matrix, we obtain 95% total polarimetric efficiency (del Toro Iniesta 2004). For each scan all frames at a given wavelength position and modulation state were averaged. We determined the orientation of our Stokes reference system with respect to the solar limb by using a dataset acquired at 13 UTC in the Fe I 4607.6 Å line, where we observed a pore region. We rotated our pore images by 10° anticlockwise until they matched SDO/HMI Stokes images of the same region in both orientation and polarization, which for HMI are calibrated to have Stokes +Q/I parallel to the north limb (Schou et al. 2012).
We heuristically corrected for crosstalk between V/I and Q/I, and V/I and U/I by minimizing a small longitudinal Zeeman signature at the edge of our FOV in U/I and Q/I, using a Poincaré rotation, as in Sect. 2.1.2. The used angles were 17° and 41° for rotation around the Q axis and the U axis, respectively, corresponding to crosstalk values of (29 ± 2)% between Q/I and V/I and (75 ± 1)% between U/I and V/I. For further analysis of the scattering polarization, regions with a Zeeman signature were excluded (see Fig. 1), which resulted in a region of interest of 8″ by 17″. Our data suffered from variable seeing conditions. For further analysis we therefore selected the first two scans with stable AO locking. To increase the signaltonoise ratio (S/N) in the polarization signal while not degrading spatial resolution significantly, we averaged both scans and applied a 2 × 2 spatial binning. Consequently, in the following we analyze one image per Stokes parameter and per wavelength position, where each image has a sampling of 0.16″ pixel^{−1} and 2.5 s exposure time.
Fig. 1.
Stokes I images for different wavelengths at μ = 0.6. The region of interest for the analysis lies inside the red box, which excludes Zeeman signatures found in the right corner. The north solar limb is parallel to the shorter axis of the red box. The image labeled with 30 mÅ corresponds to the Sr I line core. 
3. Results
3.1. Centertolimb variation of scattering polarization
Spatially averaged Sr I Stokes profiles for μ = 1.0, 0.6, 0.1 are plotted in Fig. 2. Each data point in the polarimetric spectral profiles has a low photon noise level (i.e., σI/〈I〉 < 0.02%) due to the spatial averaging. For Stokes I, we additionally plot Fourier Transform Spectrograph (FTS) atlas data by Neckel (1999) and the Stokes I_{Gan02} close to the limb at μ = 0.1 based on the atlas of Gandorfer (2002), which has been provided in electronic form by IRSOL as a compilation by Stenflo (2014). The line depth of the Stokes I_{Gan02} and the limb measurement are comparable, but for the FTS and our measured line at disk center there is a line depth difference of about 10%. This is likely due to spectral scattered light as well as lower spectral resolution of TESOS compared to the FTS. While Stokes U/I and V/I show no systematic correlation with limb distance within the spectral width of the scan in Fig. 2, the Stokes Q/I peak signal systematically increases with lower μ values, as expected.
Fig. 2.
Centertolimb variation of the polarized profiles of the Sr I 4607.3 Å line, spatially averaged over one image per μvalue. To avoid cluttering, only three out of the ten measured μ positions are displayed. For comparison, the Stokes I profile given in the FTS atlas (black solid line) and Stokes I_{Gan02} taken from Gandorfer (2002; green dashed line) is included. Each Stokes I spectrum is normalized to the continuum point at −90 mÅ. Residual polarimetric offsets after flatfielding are removed by subtracting the value of Q/I, U/I and V/I at −90 mÅ from the respective profiles at each wavelength position. 
We fitted a Gaussian function to the Q/I spectra for each μ position separately, and plot amplitudes with respect to μ in Fig. 3. For optimum fitting results the free parameters were not constrained. The standard deviation of 0.03% for Q/I, U/I and V/I in the spectral profile at μ = 1 is taken to be an estimation of the noise level as no signal is expected. Amplitudes were discarded if their ratio with the aforementioned noise level were smaller than two. The low contrast of the intensity images (<5%) justifies the use of a constant weighting factor corresponding to the mean photon noise. The 95% confidence interval for the amplitude is 0.2%. We find a maximum Q/I amplitude at μ = 0.05 of more than 1%, which is in agreement with observations summarized by Malherbe et al. (2007). Values in the literature of the Q/I amplitude at this μ value range from 0.95% (Faurobert et al. 2001) to 1.5% (Stenflo & Keller 1997), which encompass our measured Q/I amplitude. In Fig. 3 we compare our Q/I amplitudes for μ = 0.2, 0.4 and 0.8 with a range of values obtained by Stenflo et al. (1997) with ZIMPOL and a stationary polarimeter installed at IRSOL. Our amplitudes at these μ values are again consistent with the measurements in the literature. Additionally, in Fig. 3, we present as a blind test the Q/I polarization we found in the neighboring Fe I 4607.6 Å, averaged over the spectral width of the measurement, because the Stokes Q/I is flat. As Fe I is insensitive to scattering polarization, the polarization signals do not depend on the limb distance. For μ < 0.2 we spatially averaged across a smaller spatial region. This results in a higher noise level, which explains the higher scattering of the Fe I data points below μ = 0.2.
Fig. 3.
Stokes Q/I amplitude as a function of limb distance μ = cos(θ). The Sr I data points represent the amplitude of a Gaussian fit to the Q/I line, while the Fe I data points are spectrally and spatially averaged values. We note that the scale is linear and that below μ = 0.2 less pixels were averaged for each data point. The S/N beyond μ = 0.7 is below two and therefore the fitted amplitudes are discarded. For comparison, a range of Sr I polarization values obtained by ZIMPOL and a stationary IRSOL polarimeter (magenta bars show the range of values) are taken from Stenflo et al. (1997). 
3.2. Spatially resolved Stokes measurements
The Stokes I images at each recorded wavelength position in the quiet Sun observation at μ = 0.6 are displayed in Fig. 1. Based on the continuum Stokes I images at −90 mÅ, we obtained a granulation intensity contrast of 2.5%. To obtain the noise level for Stokes Q/I per pixel the spatial power spectrum of the associated image is calculated. Based on the diffraction limit of the telescope, the cutoff frequency was computed. The power contained at spatial frequencies beyond the cutoff was assumed to be representative for the photon noise level. We obtained a noise level of 0.3% per pixel for Stokes Q/I, which is consistent with the photon noise level estimated from Stokes I images. We note that these images were averaged over two scans and spatially binned as described in Sect. 2.2.2. At this noise level of 0.3%, we do not find any direct visual evidence for spatial signal fluctuations at subgranular scales in any polarization state.
The amount of the line core polarization signal in Stokes Q/I is close to 0% in the granules, while for intergranules the values are around 0.25%. The spatial mean of Stokes Q/I in the line core is 0.1%, which is lower than what is shown in Fig. 2 for μ = 0.6 but close to the lower edge of the values found by Stenflo et al. (1997). The origin of this discrepancy is unknown, but possible spatial fluctuations should be unaffected by a shift of the mean signal.
3.2.1. Correlations with the continuum intensity
To reveal correlations of polarimetric signals in the line core with the continuum image intensity, scatter plots are shown in Fig. 4. We find evidence that the Stokes Q/I image in the Sr I line core is anticorrelated with the continuum intensity. To begin with, the correlation is quantified by fitting a linear function to the signals, estimating the slope and its standard error (67% confidence interval). The values are given at the top of each panel in Fig. 4. The hint of a correlation in Q/I arises from the comparison of the Q/I correlation in the line core with the correlations in the continuum (shown in the left panels of Fig. 4) and with U/I and V/I. The latter serve as references, as only photon noise is present in these images (see Sect. 3.2.3). With −2.76 the slope of Q/I in the line core exceeds more than 18× its standard error and is higher than the slope in any other polarization state and in the continuum. Higher noise in the line core due to fewer photons than in the continuum is represented by the larger error of the slopes. The weights for the linear fit are linked to the photon noise and assumed to be constant for each data point over the field of view, since the intensity contrast is low.
Fig. 4.
Polarization signals of Stokes Q/I, U/I and V/I in the Sr I 4607.3 Å line versus normalized Stokes I continuum intensity. Left panels: polarization found in the continuum, right panels: polarization signals from the line core. Inserts display the function describing the linear fit, with x as the normalized continuum intensity and y the polarization percentage. 
To show the robustness of the slope against selection bias, we created random subsets with a quarter of the original sample size. The error in the slopes are then 2× larger than in the full data set. The slopes of the full data set are consistent with the slopes of the subsets within the error margins. We calculated the correlation coefficient for the Q/I case to be r = −0.17. The correlation coefficients for the reference images are at least one order of magnitude smaller, see Table 1 for a summary. A second statistical test was carried out by calculating the probability for observing a correlation coefficient as large or larger than r under the (null) hypothesis that the parent population is uncorrelated. We follow the method in Bevington & Robinson (2003) where this twosided probability p for N observations is given by
We approximated the normalized probability density function P(r, N) for a correlation coefficient r for large N (i.e., N > 300) with
Pearson’s correlation coefficients r and the probability p to observe a value as large or larger than r for an uncorrelated population with N = 6105.
The calculated pvalues for all polarimetric images are given in Table 1. The null hypothesis is rejected if the pvalue is smaller than 0.001, which corresponds to a confidence level of 99.9%. We reject the null hypothesis of no correlation for Stokes Q/I in the Sr I line core, as the twosided pvalue is negligible. A small correlation is present for the Q/I continuum image, potentially due to insufficient distance to the Sr I line core. However, the condition p > 0.001 is fulfilled for the reference images. This situation is maintained when the above mentioned random subsets are analyzed. We are therefore confident that the anticorrelation with r = −0.17 is statistically significant.
3.2.2. Dopplershift induced horizontal signal fluctuations
To eliminate signal fluctuations resulting from Doppler shifts, we fitted a Gaussian to the Stokes I spectrum in each spatial pixel. From these fits we calculated a Doppler map, which revealed a mean line core shift of 30 mÅ, while the standard deviation is smaller than our spectral resolution. Therefore the line core signals are largely restricted to a single image, labeled with 30 mÅ in Fig. 1. Thus we expect to see scattering polarization signals mainly in the image taken at this wavelength. In the continuum intensity image the dark intergranules and bright granules are distinguishable. Although we refer in this paper to dark and bright features in the continuum intensity as intergranules and granules, we emphasize that these terms are ambiguous due to projection effects off the solar disk center.
The contribution of Dopplershiftinduced fluctuations is on the order of 0.03% or less. We estimated this upper limit with a simple calculation using the Doppler map mentioned above. The maximum calculated Doppler shift is 23 mÅ from the mean line core shifts. The standard deviation is 16 mÅ. We initially assumed the same Gaussian shaped Stokes Q/I spectral signal in each spatial pixel located at the mean line core position of the spatially resolved data set. Further, we assumed that the Q/I amplitude in each spatial pixel equals 0.19%, this is, the average scattering Q/I signal from the centertolimb measurement at μ = 0.6. A shift of this initial Gaussian by the maximum Doppler shift leads to a drop in the a signal of about 0.03%. Additionally, the correlation between Doppler velocities and continuum intensity is an order of magnitude smaller than between Stokes Q/I and continuum intensity, which also indicates that the anticorrelation between Q/I and continuum intensity is not an artifact.
3.2.3. Crosstalk from Stokes I
We now describe a further test to show that although our Stokes signals are photon noise limited, we still have a clear distinction between Stokes Q/I signals in granules and intergranules. This is an important test to rule out crosstalk from Stokes I to Stokes Q/I as a source of correlation between them. As no polarization is expected in the continuum, we fitted a Gaussian to the probability density function (see left panels of Fig. 5) to Stokes Q/I, U/I and V/I at the continuum wavelength. To estimate the photon noise expected in the Sr I line core, where less photons are available, the standard deviation of the fitted Gaussian from the continuum was rescaled. The rescaling procedure was done by calculating the parameters (i.e., the amplitude and standard deviation) of the line core Gaussian with two constraints: the first is the ratio of the line core intensity level to continuum intensity level of 0.5 at μ = 0.6 (see right panel of Fig. 5) and the second is that the area below the Gaussian must be unity to get a probability density function.
Fig. 5.
Left panels: probability density function of Q/I, U/I and V/I in the continuum. Right panels: noise distribution for the line core of Sr I inferred from that observed at the continuum wavelength in the various Stokes parameters (magenta dashed lines). The continuum image is classified into granules and intergranules, for which we plotted the Stokes signals separately. A shifted noise distribution (green dashed line) is shown to match the Sr I line core Stokes Q/I signals in the intergranules. 
Based on the continuum intensity image, we classified pixels to granule pixels and intergranule pixels. In order to emphasize the difference between them, we only analyzed a subset of all pixels. Thus granule pixels correspond to the 1000 brightest pixels and intergranule pixels correspond to the 1000 darkest pixels. Stokes signals corresponding to granules and intergranular lanes are plotted in the right panels of Fig. 5. The signals in U/I and V/I are noise dominated and the Gaussians for the intergranule and granule pixels are indistinguishable. But for the Q/I signals in the interganule pixels, we needed to shift the center of the Gaussian in the right panel of Fig. 5 from 0% to 0.14%.
3.2.4. Influence of spatial resolution
To test if spatial resolution influences the sign of the line core Q/I slope, we spatially smeared our data by convolving the line core intensity and polarization images with Gaussians with standard deviations between 0.5 pixel and 8 pixels and redid the correlation analysis. We find that the correlation decreases rapidly with the amount of smearing, but does not change its sign. The value of the slope of Q/I versus continuum intensity in the line core when a Gaussian of a rms width of 8 pixels was applied (sampling of 0.64″ per smeared pixel) is reduced to 0.76. This is close to the slope of Q/I in the continuum at the original spatial resolution. Hence the difference in sign between our results and those of Malherbe et al. (2007) cannot be due to differences in spatial resolution.
3.2.5. Estimation of polarimetric structure size
We estimated from our line core Stokes Q/I image that the approximate diameter of structures with scattering polarization signals greater than the noise level is in the range of 0.5″–1″. The estimation is based on a twostep analysis of the mean polarization signal, its standard deviation and the expected noise level in sizevarying subregions in the image. We describe the steps in more detail in the next paragraph.
In the first step, we defined a subregion in the image as a circular area, having a radius R and containing N pixels, centered on a given pixel in the image. As all pixels were used once as a central pixel, we had in total 6105 subregions per image, independently of the subregion size N. A pixel belonged to a given subregion if its Euclidean distance from the central pixel was smaller than R. If a central pixel was closer to the image boundary than R, the image was periodically continued. We then varied R () and computed the mean polarization signal for each subregion. For each Stokes image and given N we determined the distribution of the number of subregions as a function of average polarization signal using a histogram with bin size of 0.02%. In Fig. 6 these histograms are depicted as vertical bars with a gray color scale. Black corresponds to 600 subregions and white corresponds to 0 subregions displaying a particular Stokes signal. A Gaussian was fitted to each histogram with the mean μ and the standard deviation σ as free parameters. We plot μ ± σ(N) to each histogram. Additionally, we calculated the noise level based on the single pixel noise σ_{n}(N = 1) present in each Stokes image (see Fig. 5). The noise level was reduced according to the number of averaged pixels assuming a shot noise process. According to this assumption, the noise dropped with the square root of the number of pixels N in the subregion. The noise level μ ± σ_{n}(N) is indicated in Fig. 6 as well.
For N = 1 the histograms are comparable to the right panel of Fig. 5 and are in agreement with the noise level, as expected. A minor offset in the mean of 0.01% in the U/I and 0.02% in the V/I image may be due to residual crosstalk from instrument polarization as explained in the earlier data reduction Sect. 2.2.2.
Fig. 6.
Histograms of the average polarization in all subregions with N pixels. The histograms are represented by gray vertical bars, where black and white corresponds to 600 subregions and 0 subregions, respectively. Black lines: expected noise levels for Q/I, U/I and V/I when averaging over N pixels; magenta dots: standard deviation of the histogram for each subregion; see text for details. 
In a second step we considered the absolute differences of the standard deviations of the histograms from the expected noise level. In Fig. 7 we plot the absolute difference Δ between the standard deviation σ(N) and the expected noise σ_{n}(N). The difference for Q/I follows a decreasing trend for subregions with a diameter greater than 0.8″. This means that for subregion areas greater than 0.8″^{2} only noise is added. The opposite occurs for Δ_{U/I} and Δ_{V/I}. The differences increase for subregions with up to N = 40 pixels. This increase is likely due to small Zeeman signatures present in the data. The nonzero Δ for greater N hints toward Zeeman signatures at larger scales combined with residual crosstalk errors.
Fig. 7.
Absolute differences between the standard deviation σ(N) obtained from the histograms and the expected noise σ_{n}(N) for all three polarization Stokes parameters as a function of number of pixels per subregion N (lower axis) and the subregion diameter (upper axis). 
4. Discussion and conclusions
We performed scattering polarization measurements in the Sr I 4607.3 Å line with the Fast Solar Polarimeter mounted on TESOS at the VTT on Tenerife. To our knowledge, this is the first time a measurement of the scattering polarization in the Sr I line was done with a filtergraph instrument. In a first step, we have tested the reliability of the FSP by comparing the spatially averaged centertolimb variation of the polarization signal in Sr I with previous results obtained with other instruments. In addition we verified that the centertolimb variation of Stokes Q/I in the neighboring scatteringinsensitive Fe I 4607.6 Å line is indeed consistent with zero signal. In a second step we analyzed a quiet Sun dataset in the Sr I line recorded at μ = 0.6 with a spatial resolution sufficient to clearly separate granules and intergranules in the Stokes I continuum image. After temporal and spatial binning to a nominal resolution of 0.16″ pixel^{−1} and 2.5 s integration time per wavelength and Stokes parameter, the noise per pixel in the linear polarization is 0.3%. We find a negative correlation of r = −0.17 between Stokes Q/I in the line core and the Stokes I continuum intensity. We rule out Dopplershift induced fluctuations as the source of this correlation. We stress that our measurement is photon noise limited and seeinginduced crosstalk can be ruled out. Despite the small value of the correlation coefficient, our analysis shows statistically robust evidence of an anticorrelation of Stokes Q/I with the continuum intensity in the Sr I line core.
The negative correlation found here seemingly contradicts the positive correlation reported by Malherbe et al. (2007) and Bianda et al. (2018), both obtained by using a spectrograph and at μ = 0.3, hence, closer to the solar limb. The correlation coefficient by Bianda et al. (2018) is r = 0.19, which is close to what has been found in this study, but with opposite sign. The spatial resolution achieved by Malherbe et al. (2007) cannot be better than the used slit width of 0.6″. We speculate that the difference in sign of the correlation found by these authors compared to that observed here could be due to the lower μ value at which the measurements were made. The contrast and shape of granulation and the sampled atmospheric height range changes considerably with μ. This could lead to different signs of the correlation between Stokes Q/I and continuum intensity. Results by del Pino Alemán et al. (2018) suggest that the positive sign is an artifact due to the reduced statistical significance arising from using a spectrograph.
In order to uncover the cause of different dependences of Stokes Q/I in the line core of Sr I on continuum brightness at different μ values, both, lower noise, high resolution full Stokes measurements and theoretical calculations of the spatial structure of Q/I in the Sr I line in realistic MHD simulations (Rempel 2014; Vögler & Schüssler 2007; del Pino Alemán et al. 2018) at multiple μ values, are needed. From our measurements we furthermore conclude that in order to spatially resolve polarimetric signals the noise level needs to be significantly lower than 3 × 10^{−3}.
The closest μ value to our observations at which Q/I images are presented in the most detailed published theoretical study of Sr I scattering polarization in 3D HD simulations is μ = 0.5 (Trujillo Bueno & Shchukina 2007). This polarization map with infinite spectral and high spatial resolution contains patches of polarization as large as 1%, with most of the signals varying between 0% and 0.7%, in the case where horizontally fluctuating microturbulent magnetic fields in the Hanle saturation regime of B = 300 G in the downflowing intergranules and B = 15 G in granules at all heights, are considered. In the unmagnetized case, but with a degraded spectral resolution of 25 mÅ and spatial resolution corresponding to a 1 m telescope, the signals vary between −0.08% and 0.9%. Patches of granular size with the above mentioned signal levels should be detectable in our data, but are not directly seen. With a statistical approach we estimated the sizes of the scattering polarization structures to be in the range between about 0.5″–1″. The obtained size is on the order of the patch sizes of about 1″ shown by Trujillo Bueno & Shchukina (2007). However, a more definite conclusion requires that the simulations be degraded to the same spatial resolution and scattered light conditions as the observations. Nevertheless, finding larger polarization signals in the intergranules is in qualitative agreement with Trujillo Bueno & Shchukina (2007) and results from a recently published paper by del Pino Alemán et al. (2018). They state that scattering polarization emerges from local fluctuations of the radiation field by plasma inhomogeneities, leading to axial symmetry breaking, even when observed at μ = 1. Polarization is therefore predominantly found at the interface of granules and intergranules, with a tendency for stronger polarization in intergranular lanes. Scatter plots provided by del Pino Alemán et al. (2018) show a negative correlation, independent of the μ value under consideration.
To conclude, in this work we have shown that instruments like FSP are now starting to reach the required combination of polarimetric sensitivity and spatiotemporal resolution to provide first observational feedback to theoretical studies of scattering polarization on small spatial scales. We have presented full Stokes filtergraph observations at μ = 0.6 in the Sr I 4607.3 Å line and analyzed the images statistically, as the S/N was not sufficient to directly detect local fluctuations in the solar scattering polarization signals at spatial scales significantly below 1″. From this analysis we found an anticorrelation between the line core Stokes Q/I signals and the continuum intensity. We compared our findings with published observations, which were carried out at μ = 0.3 and showed a positive correlation. We additionally compared our result with 3D HD and MHD simulations, where the latter showed a negative correlation independent of the μ value.
Acknowledgments
The authors wish to acknowledge fruitful discussions with Rafael Manso Sainz and Ivan Milic. The Fast Solar Polarimeter project is funded by the Max Planck Society (MPG) and by the European Commission, grant No. 312495 (SOLARNET). We also would like to thank the staff of the Kiepenheuer Institut für Sonnenphysik in Freiburg for supporting our FSP observing campaigns at the VTT. We thank all the technical contributors not listed as coauthors for their invaluable input to the project. This project has received funding from the European Research Council (ERC) under the European Union’s Horizon 2020 research and innovation program (grant agreement No. 695075) and has been supported by the BK21 plus program through the National Research Foundation (NRF) funded by the Ministry of Education of Korea. The participation of F. Zeuner was funded by the International Max Planck Research School for Solar System Science.
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All Tables
Pearson’s correlation coefficients r and the probability p to observe a value as large or larger than r for an uncorrelated population with N = 6105.
All Figures
Fig. 1.
Stokes I images for different wavelengths at μ = 0.6. The region of interest for the analysis lies inside the red box, which excludes Zeeman signatures found in the right corner. The north solar limb is parallel to the shorter axis of the red box. The image labeled with 30 mÅ corresponds to the Sr I line core. 

In the text 
Fig. 2.
Centertolimb variation of the polarized profiles of the Sr I 4607.3 Å line, spatially averaged over one image per μvalue. To avoid cluttering, only three out of the ten measured μ positions are displayed. For comparison, the Stokes I profile given in the FTS atlas (black solid line) and Stokes I_{Gan02} taken from Gandorfer (2002; green dashed line) is included. Each Stokes I spectrum is normalized to the continuum point at −90 mÅ. Residual polarimetric offsets after flatfielding are removed by subtracting the value of Q/I, U/I and V/I at −90 mÅ from the respective profiles at each wavelength position. 

In the text 
Fig. 3.
Stokes Q/I amplitude as a function of limb distance μ = cos(θ). The Sr I data points represent the amplitude of a Gaussian fit to the Q/I line, while the Fe I data points are spectrally and spatially averaged values. We note that the scale is linear and that below μ = 0.2 less pixels were averaged for each data point. The S/N beyond μ = 0.7 is below two and therefore the fitted amplitudes are discarded. For comparison, a range of Sr I polarization values obtained by ZIMPOL and a stationary IRSOL polarimeter (magenta bars show the range of values) are taken from Stenflo et al. (1997). 

In the text 
Fig. 4.
Polarization signals of Stokes Q/I, U/I and V/I in the Sr I 4607.3 Å line versus normalized Stokes I continuum intensity. Left panels: polarization found in the continuum, right panels: polarization signals from the line core. Inserts display the function describing the linear fit, with x as the normalized continuum intensity and y the polarization percentage. 

In the text 
Fig. 5.
Left panels: probability density function of Q/I, U/I and V/I in the continuum. Right panels: noise distribution for the line core of Sr I inferred from that observed at the continuum wavelength in the various Stokes parameters (magenta dashed lines). The continuum image is classified into granules and intergranules, for which we plotted the Stokes signals separately. A shifted noise distribution (green dashed line) is shown to match the Sr I line core Stokes Q/I signals in the intergranules. 

In the text 
Fig. 6.
Histograms of the average polarization in all subregions with N pixels. The histograms are represented by gray vertical bars, where black and white corresponds to 600 subregions and 0 subregions, respectively. Black lines: expected noise levels for Q/I, U/I and V/I when averaging over N pixels; magenta dots: standard deviation of the histogram for each subregion; see text for details. 

In the text 
Fig. 7.
Absolute differences between the standard deviation σ(N) obtained from the histograms and the expected noise σ_{n}(N) for all three polarization Stokes parameters as a function of number of pixels per subregion N (lower axis) and the subregion diameter (upper axis). 

In the text 
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