Estimation of crop residue cover in rice paddies by a dynamic-quadripartite pixel model based on Sentinel-2A data

•The dynamic quadripartite pixel model was creatively used In the rice paddies.•The effect of soil moisture was considered in quadripartite pixel model.•The joint operation of Analytical Spectral Devices data and Sentinel-2A data is used.•In mixed pixel decomposition, the variability of endmember re...

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Veröffentlicht in:International journal of applied earth observation and geoinformation 2022-02, Vol.106, p.102645, Article 102645
Hauptverfasser: Sun, Zhendong, Zhu, Qilei, Deng, Shangqi, Li, Xu, Hu, Xueqian, Chen, Riqiang, Shao, Guowen, Yang, Hao, Yang, Guijun
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Sprache:eng
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Zusammenfassung:•The dynamic quadripartite pixel model was creatively used In the rice paddies.•The effect of soil moisture was considered in quadripartite pixel model.•The joint operation of Analytical Spectral Devices data and Sentinel-2A data is used.•In mixed pixel decomposition, the variability of endmember reflectance is reduced. Crop residues left on the field after harvest increase soil organic matter content and improve soil quality. Linear spectral mixture analysis (LSMA) is an important technique for calculating crop residue cover. Traditionally, farmland has been considered to be composed solely of soil and crop residue endmembers. But rice paddy fields are often more complex than other fields. In the decomposition of pixels reflectance, leaving out potential endmembers greatly increases the variability of existing endmember reflectance. The error is then transferred to the rice residue endmember. In this paper, a dynamic-quadripartite pixel model (DQPM) is proposed to adapt LSMA to calculate rice residue cover (RRC) in complex paddy fields. This method considers that pixels in paddy fields are composed of four endmembers: soil, rice residues, green moss and white moss. With the approach, soil moisture can be calculated to automatically correct the reflectance of the soil endmembers of each pixel. The calculation results of our model were verified with field data and compared with those from the static-quadripartite pixel model (SQPM) without considering soil moisture (SM) content and with the dynamic-dimidiate pixel model (DDPM). Results confirm the feasibility of DQPM. The results show that with four endmembers, RRC has a large range of improved computational accuracy with DQPM compared with SQPM and DDPM. DDPM has a large error under 1% 
ISSN:1569-8432
1872-826X
DOI:10.1016/j.jag.2021.102645