The first and second data releases of the Kilo-Degree Survey
Jelte T. A. de Jong, Gijs A. Verdoes Kleijn, Danny R. Boxhoorn, Hugo, Buddelmeijer, Massimo Capaccioli, Fedor Getman, Aniello Grado, Ewout Helmich,, Zhuoyi Huang, Nancy Irisarri, Konrad Kuijken, Francesco La Barbera, John P., McFarland, Nicola R. Napolitano, Mario Radovich

TL;DR
The KiDS survey provides high-quality, publicly available optical imaging data over 160 square degrees, enabling diverse scientific studies including galaxy evolution, gravitational lensing, and high-redshift object detection.
Contribution
This paper presents the first two data releases of KiDS, including calibrated images, catalogs, and validation of data quality for the astronomical community.
Findings
Detection of nine high-redshift QSOs
Fifteen candidate strong gravitational lenses
High-quality photometric redshifts for hundreds of thousands of galaxies
Abstract
The Kilo-Degree Survey (KiDS) is an optical wide-field imaging survey carried out with the VLT Survey Telescope and the OmegaCAM camera. KiDS will image 1500 square degrees in four filters (ugri), and together with its near-infrared counterpart VIKING will produce deep photometry in nine bands. Designed for weak lensing shape and photometric redshift measurements, the core science driver of the survey is mapping the large-scale matter distribution in the Universe back to a redshift of ~0.5. Secondary science cases are manifold, covering topics such as galaxy evolution, Milky Way structure, and the detection of high-redshift clusters and quasars. KiDS is an ESO Public Survey and dedicated to serving the astronomical community with high-quality data products derived from the survey data, as well as with calibration data. Public data releases will be made on a yearly basis, the first two…
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