利用叶片图像进行植物叶片病害分割和多分类的优化深度学习网络。

Malathi Chilakalapudi, Sheela Jayachandran
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引用次数: 0

摘要

植物病害是农业领域的主要问题之一,因此自动检测植物病害对于监测植物非常必要。持续监测可以防治导致产量损失的植物病害。在全球农产品生产中,植物病害起着重要作用,它危害产量,给经济、社会和环境造成损失。人工识别叶片上的病害症状似乎是一项艰巨而耗时的任务。大多数病害症状都反映在植物叶片上,但实验室的专家们却要花费大量的金钱和时间来诊断。影响作物优劣和产量的大部分特征是植物或作物病害。因此,在感染的起始阶段对污染症状进行分类、分割和识别是必不可少的。精准农业采用深度学习模型来共同解决这些问题。本研究利用优化的深度学习技术,引入了一种高效的植物叶片分割和植物叶片病害识别模型。结果,优化后的深度学习方法达到了最高的检测准确率 94.69%、灵敏度 95.58%、特异性 92.90%。
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Optimized deep learning network for plant leaf disease segmentation and multi-classification using leaf images.
Automatic detection of plant diseases is very imperative for monitoring the plants because they are one of the major concerns in the agricultural sector. Continuous monitoring can combat diseases of plants, which contribute to production loss. In the global production of agricultural goods, the disease of plants plays a significant role and harms yield, resulting in losses for the economy, society, and environment. It seems like a difficult and time-consuming task to manually identify diseased symptoms on leaves. The majority of disease symptoms are reflected in plant leaves, but experts in laboratories spend a lot of money and time diagnosing them. The majority of the features, which affect crop superiority and amount are plant or crop diseases. Therefore, classification, segmentation, and recognition of contaminated symptoms at the starting phase of infection is indispensable. Precision agriculture employs a deep learning model to jointly address these issues. In this research, an efficient disease of plant leaf segmentation and plant leaf disease recognition model is introduced using an optimized deep learning technique. As a result, maximum testing accuracy of 94.69%, sensitivity of 95.58%, and specificity of 92.90% were attained by the optimized deep learning method.
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