Fruit Disease Classification and Localization Using Region Based Regression

Annamalai Kavitha, Samuel Raja, Palaniswami Sampath
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Abstract

Fruit disease classification using computer vision techniques is completely viral upon machine learning capabilities. The complete analysis is based upon regression using region proposal networks and their optimization using Gradient Clipping methodology. Fruit diseases such as flyspeck, blotch, scab and rot are detected and classified using the Region proposal network regression. The recent works carried out on the fruit disease detection and classification on agricultural crops were gathered and surveyed in this paper. Finally the very recent work carried out using regression and computer vision techniques were identified and applied to the data collected here with 6231 images and 24 classes. The diseased and disinfected were filtered for training purpose into 3110 images as diseases and the rest as disinfected. The hyperparameters tuning optimization was able to fit only the random data images, instead gradient clipping resulted in the proper limit cropping of the diseased portions of the crop footage. To improve the training data stability regression was employed with this optimization to show the results obtained from 95.3% to 97.8%. Here, the RCNN classification using neural networks resulted in the overall accuracy of the fruit disease classification model to 95.83%, where the Gradient Clipping optimization resulted in the improvement of accuracy of model to 97.8%.
利用基于区域的回归进行水果病害分类和定位
利用计算机视觉技术进行水果病害分类完全依赖于机器学习能力。整个分析基于使用区域建议网络进行回归,并使用梯度剪切方法对其进行优化。利用区域建议网络回归法检测并分类飞斑、斑点、疮痂和腐烂等水果病害。本文收集并调查了近期在农作物果实病害检测和分类方面开展的工作。最后,利用回归和计算机视觉技术确定了近期开展的工作,并将其应用于本文收集的 6231 幅图像和 24 个类别的数据。为了训练的目的,将病害图像和消毒图像筛选为 3110 幅病害图像,其余为消毒图像。超参数调整优化只适用于随机数据图像,而梯度剪切则对作物镜头中的病害部分进行了适当的限制剪切。为了提高训练数据的稳定性,使用了回归优化,结果显示从 95.3% 提高到 97.8%。在这里,使用神经网络进行 RCNN 分类后,水果病害分类模型的总体准确率达到 95.83%,而梯度剪切优化后,模型的准确率提高到 97.8%。
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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