Convolutional Neural Networks for Detection of Storage Disorders on ‘Abbé Fétel’ pears

A. Bonora, Eleonora Trevisani, K. Bresilla, L. Corelli Grappadelli, G. Bortolotti, L. Manfrini
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引用次数: 1

Abstract

Image processing has recently been adopted for fruit damage detection in post-harvest operations. Through the implementation of hard-coded feature extraction algorithms, high accuracy has been found. The present study tested the fast and operational convolution neural networks with “YOLO v3” architecture using the online platform Supervise.ly to detect on pear fruit ‘Abbé Fétel’ physiological disorders such as superficial scald. Two different models were trained: I) one to detect the individual pear fruits within the batches; II) one to detect superficial scald or senescence scald on pear skin. Preliminary statistics show that the model to count the fruit inside the batches reaches an accuracy of 64.70% with a 0.5 of Intersection of Units. The second one has less accuracy (up to 20% of true positive) but maintains a good level of average precision (0.6) with different confidence thresholds (0.4 and 0.2). Further research is needed to improve the accuracy of both models and to map quality pre- and post-harvest. These results will help the packing house to manage fruit batches and to ensure good fruit quality for consumers.
基于卷积神经网络的“abbabre fsamtel”梨储藏障碍检测
近年来,图像处理已被用于果实收获后的损伤检测。通过硬编码特征提取算法的实现,发现了较高的准确率。本研究使用在线平台Supervise测试了具有“YOLO v3”架构的快速可操作卷积神经网络。主要用于检测梨果实上的' abbabre fsamtel '生理障碍,如表面烫伤。训练了两种不同的模型:1)一种用于检测批次内的单个梨果实;2)梨皮浅表烫伤或衰老烫伤的检测。初步统计表明,该模型在单位交集0.5的情况下,对批内水果进行计数的准确率达到64.70%。第二种方法的准确性较低(高达真阳性的20%),但在不同的置信阈值(0.4和0.2)下保持了良好的平均精度(0.6)。需要进一步的研究来提高这两个模型的准确性,并提高采收前后的地图质量。这些结果将有助于包装厂管理水果批次,并为消费者确保良好的水果质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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