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A MACHINE VISION SYSTEM FOR QUANTIFICATION OF CITRUS FRUIT DROPPED ON THE GROUND UNDER THE CANOPY

机译:一种用于量化冠层下地面上柑橘类水果的机器视觉系统

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摘要

The overall goal of this study was to develop a machine vision system to quantify dropped citrus fruits on the ground. Specific objectives were: (1) to build a machine vision system suitable for citrus grove field conditions, (2) to develop an image enhancement algorithm for varying illumination conditions, and (3) to develop an image processing algorithm to estimate citrus fruit drop count and mass. The image processing algorithm consisted of (1) illumination enhancement using a retinex algorithm, (2) classification, (3) segmentation using a watershed algorithm with h-minima transform, and (4) ellipse fitting for mass estimation. Performances of the algorithms were evaluated in terms of correct identification and false positive errors. The average correct identification rate was 88.1%, 83.6%, and 82.9% for logistic regression, k-nearest neighbor (kNN), and Bayesian classifiers, respectively. False positive errors were 13.7%, 40.9%, and 17.9% for logistic regression, kNN, Bayesian classifiers, respectively. The results demonstrate the system's ability to quantify dropped fruits with specific geo-referenced location information. Spatially varied fruit drop maps plotted from the results can assist growers in finding problematic areas in their citrus groves more efficiently while reducing inspection and treatment costs. Such maps can also facilitate treatment of citrus Huanglongbing (HLB) disease in combination with HLB intensity data, psyllid counts, fertilization programs, and other block-specific management practices.
机译:这项研究的总体目标是开发一种机器视觉系统,以量化地面上掉落的柑橘类水果。具体目标是:(1)构建适合柑橘园田间条件的机器视觉系统;(2)开发用于变化光照条件的图像增强算法;以及(3)开发图像处理算法以估算柑橘类水果的滴落计数和质量。图像处理算法包括(1)使用retinex算法的照明增强,(2)分类,(3)使用具有h-minima变换的分水岭算法进行分割以及(4)用于质量估计的椭圆拟合。根据正确的识别和误报错误评估了算法的性能。 Logistic回归,k最近邻(kNN)和贝叶斯分类器的平均正确识别率分别为88.1%,83.6%和82.9%。逻辑回归,kNN和贝叶斯分类器的误报率分别为13.7%,40.9%和17.9%。结果表明,该系统具有使用特定的地理参考位置信息量化掉落的果实的能力。根据结果​​绘制的空间变化的水果滴图可以帮助种植者更有效地在柑橘园中找到有问题的区域,同时减少检查和处理成本。此类地图还可结合HLB强度数据,木虱计数,受精程序和其他特定块管理方法,促进柑橘黄龙病(HLB)疾病的治疗。

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