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Automatic citrus canker detection from leaf images captured in field

机译:从田间捕获的叶片图像中自动检测柑橘溃疡病

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摘要

Citrus canker, a bacterial disease of citrus tree leaves, causes significant damage to citrus production worldwide. Effective and fast disease detection methods must be undertaken to minimize the losses of citrus canker infection. In this paper, we present a new approach based on global features and zone-based local features to detect citrus canker from leaf images collected in field which is more difficult than the leaf images captured in labs. Firstly, an improved AdaBoost algorithm is used to select the most significant features of citrus lesions for the segmentation of the lesions from their background. Then a canker lesion descriptor is proposed which combines both color and local texture distribution of canker lesion zones suggested by plant phytopathologists. A two-level hierarchical detection structure is developed to identify canker lesions. Thirdly, we evaluate the proposed method and its comparison with other approaches, and the experimental results show that the proposed approach achieves similar classification accuracy as human experts.
机译:柑橘溃疡病是一种柑橘类树叶的细菌性疾病,对全世界的柑橘生产造成重大损害。必须采取有效且快速的疾病检测方法,以最大程度地减少柑橘溃疡病感染的损失。在本文中,我们提出了一种基于全局特征和基于区域的局部特征的新方法,用于从田间采集的叶片图像中检测柑橘溃疡病,这比在实验室中捕获的叶片图像更困难。首先,使用改进的AdaBoost算法从柑桔病变的背景中选择柑橘病变的最显着特征。然后提出了一种溃疡病害描述子,其结合了植物植物病理学家建议的溃疡病灶区域的颜色和局部纹理分布。建立了两级分层检测结构来识别溃疡病。第三,我们评估了该方法及其与其他方法的比较,实验结果表明,该方法具有与人类专家相似的分类精度。

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