Atmospheric correction for HY-1C CZI images using neural network in western Pacific region

Men, Jilin and Liu, Jianqiang and Xia, Guangping and Yue, Tong and Tong, Ruqing and Tian, Liqiao and Arai, Kohei and Wang, Linyu (2022) Atmospheric correction for HY-1C CZI images using neural network in western Pacific region. Geo-spatial Information Science, 25 (3). pp. 476-488. ISSN 1009-5020

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Abstract

With a spatial resolution of 50 m, a revisit time of three days, and a swath of 950 km, the coastal zone imager (CZI) offers great potential in monitoring coastal zone dynamics. Accurate atmospheric correction (AC) is needed to exploit the potential of quantitative ocean color inversion. However, due to the band setting of CZI, the AC over coastal waters in the western Pacific region with complex optical properties cannot be realized easily. This research introduces a novel neural network (NN) AC algorithm for CZI data over coastal waters. Total 100,000 match-ups of HY-1 C CZI-observed reflectance at the top-of-atmosphere and Operational Land Imager (OLI)-retrieved high-quality remote sensing reflectance (Rrs) at the CZI bands are built to train the NN model. These reflectance data are obtained from the standard AC algorithm in the SeaDAS. Results indicate that the distributions of the CZI retrieved Rrs were consistent with the quasi-synchronous OLI data, but the spatial information from the CZI is more detailed. Then, the accuracy of the CZI data for AC is evaluated using the multi-source in-situ data. Results further show that the NN-AC can successfully retrieve Rrs for CZI and the coefficients of determination in the blue, green, red, and near-infrared bands were 0.70, 0.77, 0.76, and 0.67, respectively. The NN algorithm does not depend on shortwave-infrared bands and runs very fast once properly trained.

Item Type: Article
Subjects: Eprints AP open Archive > Geological Science
Depositing User: Unnamed user with email admin@eprints.apopenarchive.com
Date Deposited: 08 Jun 2023 08:53
Last Modified: 22 Jan 2024 04:53
URI: http://asian.go4sending.com/id/eprint/598

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