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用于检测大豆植被指数的高光谱图像中感兴趣区域的自动优化

Automatic optimization of regions of interest in hyperspectral images for detecting vegetative indices in soybeans.

作者信息

Lee Sangyeab, Ghimire Amit, Kim Yoonha, Lee Jeong-Dong

机构信息

Department of Applied Biosciences, Kyungpook National University, Daegu, Republic of Korea.

Department of Integrative Biology, Kyungpook National University, Daegu, Republic of Korea.

出版信息

Front Plant Sci. 2025 Mar 6;16:1511646. doi: 10.3389/fpls.2025.1511646. eCollection 2025.

Abstract

Vegetative indices (VIs) are widely used in high-throughput phenotyping (HTP) for the assessment of plant growth conditions; however, a range of VIs among diverse soybeans is still an unexplored research area. For this reason, we investigated a range of four major VIs: normalized difference vegetation index (NDVI), photochemical reflectance index (PRI), anthocyanin reflectance index (ARI), and change to carotenoid reflectance index (CRI) in diverse soybean accessions. Furthermore, we ensured the correct positioning of the region of interest (ROI) on the soybean leaf and clarified the effect of choosing different ROI sizes. We also developed a Python algorithm for ROI selection and automatic VIs calculation. According to our results, each VI showed diverse ranges (NDVI: 0.60-0.84, PRI: -0.03 to 0.05, ARI: -0.84 to 0.85, CRI: 2.78-9.78) in two different growth stages. The size of pixels in ROI selection did not show any significant difference. In contrast, the shaded part and the petiole part had significant differences compared with the non-shaded and tip, side, and center of the leaf, respectively. In the case of the Python algorithm, algorithm-derived VIs showed a high correlation with the ENVI software-derived value: NDVI -0.97, PRI -0.96, ARI -0.98, and CRI -0.99. Moreover, the average error was detected to be less than 2.5% in all these VIs than in ENVI.

摘要

植被指数(VIs)在高通量表型分析(HTP)中被广泛用于评估植物生长状况;然而,不同大豆品种间一系列植被指数仍是一个未被探索的研究领域。因此,我们研究了四种主要植被指数在不同大豆品种中的情况:归一化差异植被指数(NDVI)、光化学反射指数(PRI)、花青素反射指数(ARI)和类胡萝卜素反射指数变化值(CRI)。此外,我们确保了感兴趣区域(ROI)在大豆叶片上的正确定位,并阐明了选择不同ROI大小的影响。我们还开发了一种用于ROI选择和自动计算植被指数的Python算法。根据我们的结果,在两个不同生长阶段,每个植被指数都呈现出不同的范围(NDVI:0.60 - 0.84,PRI:-0.03至0.05,ARI:-0.84至0.85,CRI:2.78 - 9.78)。ROI选择中像素大小没有显示出任何显著差异。相比之下,阴影部分和叶柄部分分别与叶片的非阴影部分以及叶尖、叶侧和叶中心相比存在显著差异。在Python算法的情况下,算法得出的植被指数与ENVI软件得出的值具有高度相关性:NDVI为-0.97,PRI为-0.96,ARI为-0.98,CRI为-0.99。此外,所有这些植被指数的平均误差检测到比ENVI中的误差小于2.5%。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9c03/11922918/c80732f6f9de/fpls-16-1511646-g001.jpg

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