Spatio-temporal mapping of leaf area index in rice: spectral indices and multi-scale texture comparison derived from different sensors.

Changming Li, Xing Teng, Yong Tan, Yong Zhang, Hongchen Zhang, Dan Xiao, Shanjun Luo
Author Information
  1. Changming Li: Engineering Technology Research and Development Center, Changchun Guanghua University, Changchun, China.
  2. Xing Teng: Rural Energy and Ecological Research Institute, Jilin Academy of Agricultural Sciences, Changchun, China.
  3. Yong Tan: School of Physics, Changchun University of Science and Technology, Changchun, China.
  4. Yong Zhang: School of Electrical and Information Engineering, Changchun Guanghua University, Changchun, China.
  5. Hongchen Zhang: Engineering Technology Research and Development Center, Changchun Guanghua University, Changchun, China.
  6. Dan Xiao: Rural Energy and Ecological Research Institute, Jilin Academy of Agricultural Sciences, Changchun, China.
  7. Shanjun Luo: Aerospace Information Research Institute, Henan Academy of Sciences, Zhengzhou, China.

Abstract

Introduction: Monitoring the leaf area index (LAI), which is directly related to the growth status of rice, helps to optimize and meet the crop's fertilizer requirements for achieving high quality, high yield, and environmental sustainability. The remote sensing technology of the unmanned aerial vehicle (UAV) has great potential in precision monitoring applications in agriculture due to its efficient, nondestructive, and rapid characteristics. The spectral information currently widely used is susceptible to the influence of factors such as soil background and canopy structure, leading to low accuracy in estimating the LAI in rice.
Methods: In this paper, the RGB and multispectral images of the critical period were acquired through rice field experiments. Based on the remote sensing images above, the spectral indices and texture information of the rice canopy were extracted. Furthermore, the texture information of various images at multiple scales was acquired through resampling, which was utilized to assess the estimation capacity of LAI.
Results and discussion: The results showed that the spectral indices (SI) based on RGB and multispectral imagery saturated in the middle and late stages of rice, leading to low accuracy in estimating LAI. Moreover, multiscale texture analysis revealed that the texture of multispectral images derived from the 680 nm band is less affected by resolution, whereas the texture of RGB images is resolution dependent. The fusion of spectral and texture features using random forest and multiple stepwise regression algorithms revealed that the highest accuracy in estimating LAI can be achieved based on SI and texture features (0.48 m) from multispectral imagery. This approach yielded excellent prediction results for both high and low LAI values. With the gradual improvement of satellite image resolution, the results of this study are expected to enable accurate monitoring of rice LAI on a large scale.

Keywords

References

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Word Cloud

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