基于机器视觉的孟加拉三种水果病害识别的探索性分析

Md. Tarek Habib, Md. Jueal Mia, Mohammad Shorif Uddin, F. Ahmed
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引用次数: 2

摘要

孟加拉国是一个人口稠密的国家,其财政和粮食安全在很大程度上依赖农业。因此,水果的数量和质量都变得非常重要,但由于各种疾病的侵袭,水果的质量可能会下降。自动化水果病害识别可以帮助果农,特别是偏远地区的果农,因为他们需要足够的栽培支持。水果病害自动识别提出了病害检测和病害分类两个难题。在这项研究中,我们对三种可用的孟加拉国当地水果,即番石榴,菠萝蜜和木瓜的疾病自动识别的适用性进行了深入的调查。在运用了四种著名的分割算法后,选择了[公式:见文]均值聚类分割算法,对水果图像中受病害污染的部分进行分离。然后从这些疾病污染部位提取出一些区别特征。将9种值得注意的分类算法应用于疾病分类,以彻底衡量其优点。随机森林分类器对番石榴和菠萝蜜的准确率分别为96.8%和89.59%,优于其他8种分类器,而支持向量机对木瓜的准确率为94.9%,这对于未来的研究来说是很有吸引力的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Explorative Analysis on the Machine-Vision-Based Disease Recognition of Three Available Fruits of Bangladesh
Bangladesh, being a densely populated country, hinges on agriculture for the security of finance and food to a large extent. Hence, both the fruits’ quantity and quality turn out to be very important, which can be degraded due to the attacks of various diseases. Automated fruit disease recognition can help fruit farmers, especially remote farmers, for whom adequate cultivation support is required. Two daunting problems, namely disease detection, and disease classification are raised by automated fruit disease recognition. In this research, we conduct an intense investigation of the applicability of automated recognition of the diseases of three available Bangladeshi local fruits, viz. guava, jackfruit, and papaya. After exerting four notable segmentation algorithms, [Formula: see text]-means clustering segmentation algorithm is selected to segregate the disease-contaminated parts from a fruit image. Then some discriminatory features are extracted from these disease-contaminated parts. Nine noteworthy classification algorithms are applied for disease classification to thoroughly get the measure of their merits. It is observed that random forest outperforms the eight other classifiers by disclosing an accuracy of 96.8% and 89.59% for guava and jackfruit, respectively, whereas support vector machine attains an accuracy of 94.9% for papaya, which can be claimed good as well as attractive for forthcoming research.
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