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Comparison of Image Features Descriptions for Diagnosis of Leaf Diseases

机译:图像特征描述对叶片疾病诊断的特征描述

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The agricultural industries have always demanded technologies for the automatic discovery and diagnosis of plant diseases with high speed, accuracy, and low cost. Numerous studies have been conducted in response to this demand; however, significant issues remain in most cases where a large-scale dataset of field images is taken with different atmospheric conditions, lighting, scale, and in different directions. The large dataset often causes high computational and storage costs. To overcome this problem, we focus on methods based on efficient invariant image features. These methods are robust against such external factors added during image acquisitions with low computational cost and higher accuracy. We then use a well-known data clustering algorithm k-means to create visual features for lesions. We then create a group of robust visual features (BoVF) using the Term Frequency-Inverse Document Frequency (TF-IDF) weighting scheme that considers the most important visual features in the image for classification. Experimental results classify the BoVF using K-means clustering that categorizes a particular disease in the leaf image into their appropriate group.
机译:农业产业始终要求高速,准确性和低成本的自动发现和诊断植物疾病的技术。若干研究已经响应了这种需求;然而,在大多数情况下,在大多数情况下留下了大多数情况,其中拍摄了不同的大气条件,照明,缩放和不同方向的大规模数据集。大型数据集通常会导致高计算和存储成本。为了克服这个问题,我们专注于基于有效的不变图像功能的方法。这些方法对具有低计算成本和更高的准确度的图像采集期间添加的外部因素是稳健的。然后,我们使用众所周知的数据聚类算法K-means来创建病变的可视特征。然后,我们使用术语频率 - 逆文档频率(TF-IDF)加权方案创建一组强大的可视特征(BOVF),该方案考虑图像中的最重要的视觉功能以进行分类。实验结果使用K-means聚类对BoVF进行分类,将特定疾病分类为叶片图像中的特定疾病。

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