RCSLenS: The Red Cluster Sequence Lensing Survey
H. Hildebrandt, A. Choi, C. Heymans, C. Blake, T. Erben, L. Miller, R., Nakajima, L. van Waerbeke, M. Viola, A. Buddendiek, J. Harnois-D\'eraps, A., Hojjati, B. Joachimi, S. Joudaki, T. D. Kitching, C. Wolf, S. Gwyn, N., Johnson, K. Kuijken, Z. Sheikhbahaee, A. Tudorica

TL;DR
The RCSLenS survey provides a large, multi-band imaging dataset optimized for weak gravitational lensing analysis, with careful systematic error assessment, enabling cross-correlation studies and mass reconstructions of galaxy clusters.
Contribution
This work applies and extends CFHTLenS methods to the largest public multi-band survey suitable for weak lensing, with detailed data processing and systematic error control.
Findings
Lensing sources density of 8.1 galaxies/arcmin^2 down to r~24.5
Public release of data products for weak lensing and mass mapping
Identification of residual B-mode systematics limiting cosmic shear use
Abstract
We present the Red-sequence Cluster Lensing Survey (RCSLenS), an application of the methods developed for the Canada France Hawaii Telescope Lensing Survey (CFHTLenS) to the ~785deg, multi-band imaging data of the Red-sequence Cluster Survey 2 (RCS2). This project represents the largest public, sub-arcsecond seeing, multi-band survey to date that is suited for weak gravitational lensing measurements. With a careful assessment of systematic errors in shape measurements and photometric redshifts we extend the use of this data set to allow cross-correlation analyses between weak lensing observables and other data sets. We describe the imaging data, the data reduction, masking, multi-colour photometry, photometric redshifts, shape measurements, tests for systematic errors, and a blinding scheme to allow for more objective measurements. In total we analyse 761 pointings with r-band…
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