Plant Disease Detection Using Clustering Based Segmentation and Neural Networks

Aditya Mohan, Kushagra Srivastava, Garima Malhotra, N. U. Khan
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引用次数: 1

Abstract

Farmer suicides in India had ranged between 1.4 and 1.8 per hundred thousand people, accounting to 11.2 % of all suicides in India due to reasons like debt, low produce prices, crops failure and alcohol addiction. Among these, crop failure is attributed to various factors including unpredictable weather conditions, poor farming practices, pests and diseases along withill use of fertilizers and late disease diagnosis. Various systems have been proposed and implemented for immediate identification of the disease, using mobile devices for disease identification and consequent action, but the majority of proposed approaches involve segmentation techniques coupled with classical machine learning algorithms, which focused on the entire plant or fruit image, not primarily on the diseased part, thus embedding pixels which introduce possible bias in each data point leading to an imprecise training dataset and consequently faulty training. In this paper we propose a method of leveraging a combination of clustering based segmentation for identification of the diseased part exclusively and consequent feature extraction over it along with using neural networks over classical algorithms, thereby increasing feature complexity and thus better training, increasing training accuracy and leaving scope for further integration of huge amount of data which can added later on.
基于聚类分割和神经网络的植物病害检测
印度农民的自杀率在每10万人中1.4到1.8人之间,占印度自杀总数的11.2%,原因包括债务、农产品价格低、作物歉收和酗酒。其中,作物歉收可归因于各种因素,包括不可预测的天气条件、不良的耕作方法、病虫害以及化肥的使用不当和疾病诊断不及时。已经提出并实施了各种系统,用于立即识别疾病,使用移动设备进行疾病识别和随后的行动,但大多数提出的方法涉及分割技术与经典机器学习算法相结合,其重点是整个植物或水果图像,而不是主要针对患病部分。因此,在每个数据点中嵌入可能引入偏差的像素会导致不精确的训练数据集,从而导致错误的训练。在本文中,我们提出了一种利用基于聚类的分割相结合的方法来识别病变部位,并对其进行随后的特征提取,同时在经典算法上使用神经网络,从而增加特征复杂性,从而更好地训练,提高训练精度,并为进一步整合大量数据留下空间,这些数据可以在以后添加。
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