4.7 Article

Remote-sensing estimation of potato above-ground biomass based on spectral and spatial features extracted from high-definition digital camera images

期刊

出版社

ELSEVIER SCI LTD
DOI: 10.1016/j.compag.2022.107089

关键词

UAV; Digital images; Potato; Texture features; Crop height; Above ground biomass

资金

  1. Key Field Research and Develop-ment Program of Guangdong Province [2019B020216001]
  2. National Natural Science Foundation of China [41601346]

向作者/读者索取更多资源

Above-ground biomass (AGB) is an important index for evaluating photosynthesis capacity and crop yield. Accurate monitoring of AGB helps improve agricultural fertilization management and optimize planting patterns. This study used remote sensing techniques to obtain RGB images of different growth periods of potatoes and analyzed the correlation between image features and AGB. The results showed that combining textures, crop height, and RGB-VIs can enhance the accuracy of potato AGB estimation.
Above-ground biomass (AGB) is a significant phenotypic index for evaluating photosynthesis capacity, healthy growth, and estimating crop yield. Accurately monitoring the AGB helps improve agricultural fertilization management and optimize planting patterns. Numerous studies have confirmed that canopy spectrum saturation causes optical vegetation indices (VIs) to underestimate the AGB of crops at multiple growth periods. To solve this problem, the present research used a remote sensing method to obtain RGB images of potato tuber formation-, tuber growth-, and starch accumulation-periods by a high-definition digital camera sensor on the unmanned aerial vehicle (UAV). From the ultrahigh spatial resolution RGB images, we then extracted RGB-VIs, textures (based on the gray level co-occurrence matrix, GLCM), and crop height (Hdsm) and analyzed the correlation between the three image features and the potato AGB for single and multiple growth periods. Finally, we estimated potato AGB at multiple growth periods based on (1) RGB-VIs, (2) RGB-VIs + GLCM-based textures, (3) RGB-VIs + Hdsm, and (4) RGB-VIs + GLCM-based textures + Hdsm by applying multiple stepwise regression (MSR) and extreme learning machine (ELM). The results showed that (i) unlike the texture features of wheat and maize that increased with growth period, the texture features and crop height of the potato canopy both increased first and then decreased with the growth period. (ii) The potato AGB was poorly estimated when using RGB-VIs, CLCM-based textures, or Hdsm individually; (iii) combining GLCM-based textures, Hdsm, and RGB-VIs solved the problem of underestimating the high AGB values of potato samples by the RGB-VIs model alone. Therefore, combining GLCM-based textures, Hdsm, and RGB-VIs obtained from UAV digital images could enhance the accuracy of potato AGB estimation under high coverage.

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