基于无人机多光谱图像的扁豆作物育种小区自动检测与分割

Imran Ahmed, M. Eramian, I. Ovsyannikov, William van der Kamp, K. Nielsen, H. Duddu, Arafia Rumali, S. Shirtliffe, K. Bett
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引用次数: 20

摘要

无人机与图像检测和分割技术相结合,可用于提取单个育种或研究地块的植物表型信息。每个地块包含单一遗传系的植物。育种者有兴趣选择具有提高作物产量或抗逆性的首选表型(物理性状)的品系。地块的自动检测和分割将实现地块表型的自动监测和定量,与人工评估相比,允许更快的选择过程所需的工时大大减少。提出了一种基于拉普拉斯高斯(LoG)斑点检测的检测算法和一种基于无监督聚类和随机行走图像分割相结合的分割算法,对多光谱航空图像中的扁豆地块进行检测和分割。该算法从归一化差异植被指数(NDVI)图像中检测和分割扁豆图。检测算法的平均准确率和召回率分别为96.3%和97.2%。检测到的分割图与其ground truth之间的平均Dice相似系数为0.906。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Detection and Segmentation of Lentil Crop Breeding Plots From Multi-Spectral Images Captured by UAV-Mounted Camera
Unmanned Aerial Vehicles (UAVs) paired with image detection and segmentation techniques can be used to extract plant phenotype information of individual breeding or research plots. Each plot contains plants of a single genetic line. Breeders are interested in selecting lines with preferred phenotypes (physical traits) that increase crop yield or resilience. Automated detection and segmentation of plots would enable automatic monitoring and quantification of plot phenotypes, allowing a faster selection process that requires much fewer person-hours compared with manual assessment. A detection algorithm based on Laplacian of Gaussian (LoG) blob detection and a segmentation algorithm based on a combination of unsupervised clustering and random walker image segmentation are proposed to detect and segment lentil plots from multi-spectral aerial images. Our algorithm detects and segments lentil plots from normalized difference vegetative index (NDVI) images. The detection algorithm exhibited an average precision and recall of 96.3% and 97.2% respectively. The average Dice similarity coefficient between a detected segmented plot and its ground truth was 0.906.
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