Developing an integrated index based on phenological metrics for evaluating cadmium stress in rice using Sentinel-2 data

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[1] Sun, Ning
[2] Wang, Ping
[3] Huang, Fang
[4] Li, Bo
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Wang, Ping (wangp666@nenu.edu.cn) | 1600年 / SPIE卷 / 12期
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Effectively assessing cadmium (Cd) contamination in crops is crucial for the sustainable development of an agricultural ecosystem and for environmental security. We developed an integrated stress index (SI) based on two phenological metrics to effectively evaluate Cd stress in rice crops. The selected four experimental areas are located in Zhuzhou City, Hunan Province, China. Six Sentinel-2 images were acquired in 2017, and heavy metal concentrations in soil were measured. The change rate of CIre (CRCIre) and the time-integrated CIre (TICIre) were obtained from daily red-edge chlorophyll index (CIre) time-series using Sentinel-2 data. The CRCIre and TICIre were used to characterize the photosynthetic rate and biomass, respectively. SI was calculated by Fisher discriminant analysis based on CRCIre and TICIre from two experimental areas, and it was verified using another two experimental areas. The results were the following: (i) when SI = 0, rice was under mild stress and when SI © 2018 Society of Photo-Optical Instrumentation Engineers (SPIE).
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