基于无约束图像的棉花病害检测与严重程度估计

Aditya Parikh, M. Raval, Chandrasinh Parmar, S. Chaudhary
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引用次数: 52

摘要

本文的主要研究重点是利用图像对棉花植株进行病害检测和阶段估计。大多数疾病症状都反映在棉花叶片上。与之前的方法不同,该提议的新颖之处在于,由未经训练的人使用普通相机或手机相机处理在现场不受控制的条件下拍摄的图像。这样的田野图像有一个杂乱的背景,使得树叶分割非常具有挑战性。建议的工作使用两个级联分类器。利用局部统计特征,首先分类器从背景中分割叶子。然后利用HSV色彩空间中的色调和亮度训练另一个分类器来检测疾病并确定其阶段。所开发的算法是一般化的,因为它可以应用于任何疾病。然而,作为一个展示,我们检测灰霉,广泛流行的真菌疾病在北古吉拉特邦,印度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Disease Detection and Severity Estimation in Cotton Plant from Unconstrained Images
The primary focus of this paper is to detect disease and estimate its stage for a cotton plant using images. Most disease symptoms are reflected on the cotton leaf. Unlike earlier approaches, the novelty of the proposal lies in processing images captured under uncontrolled conditions in the field using normal or a mobile phone camera by an untrained person. Such field images have a cluttered background making leaf segmentation very challenging. The proposed work use two cascaded classifiers. Using local statistical features, first classifier segments leaf from the background. Then using hue and luminance from HSV colour space another classifier is trained to detect disease and find its stage. The developed algorithm is a generalised as it can be applied for any disease. However as a showcase, we detect Grey Mildew, widely prevalent fungal disease in North Gujarat, India.
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