The Hayabusa Spacecraft Asteroid Multi-Band Imaging Camera: AMICA
Masateru Ishiguro, Ryosuke Nakamura, David J. Tholen, Naru Hirata,, Hirohide Demura, Etsuko Nemoto, Akiko M. Nakamura, Yuta Higuchi, Akito, Sogame, Aya Yamamoto, Kohei Kitazato, Yasuhiro Yokota, Takashi Kubota,, Tatsuaki Hashimoto, and Jun Saito

TL;DR
The paper details the design, calibration, and performance of the AMICA multispectral camera on the Hayabusa spacecraft, which captured extensive images of asteroid Itokawa, including calibration accuracy and image restoration techniques.
Contribution
This work provides a comprehensive calibration and performance assessment of AMICA, including methods for radiance and reflectance calibration, and demonstrates image restoration techniques for asteroid imaging.
Findings
AMICA's signal is linear within 1% for signals below 3800 DN.
Absolute radiance calibration accuracy is within 4%.
Image restoration using star-based PSFs is effective.
Abstract
The Hayabusa Spacecraft Asteroid Multiband Imaging Camera (AMICA) has acquired more than 1400 multispectral and high-resolution images of its target asteroid, 25143 Itokawa, since late August 2005. In this paper, we summarize the design and performance of AMICA. In addition, we describe the calibration methods, assumptions, and models, based on measurements. Major calibration steps include corrections for linearity and modeling and subtraction of bias, dark current, read-out smear, and pixel-to-pixel responsivity variations. AMICA v-band data were calibrated to radiance using in-flight stellar observations. The other band data were calibrated to reflectance by comparing them to ground-based observations to avoid the uncertainty of the solar irradiation in those bands. We found that the AMICA signal was linear with respect to the input signal to an accuracy of << 1% when the signal level…
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