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A Crop Disease Image Retrieval Method Based on the Improvement of Inverted Index

机译:一种基于改进倒指数的作物疾病图像检索方法

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According to the characteristics of crop leaf disease images, we proposed a new image retrieval method based on the improvement of inverted index to diagnose crop leaf diseases. First of all, the input crop disease images were preprocessed, including compression, denoising, enhancement, etc. And then the features of disease in the whole image were extracted. Meanwhile, in order to reduce the storage space of inverted index feature vectors, the Hash method was adopted to map the inverted index feature vectors to binary values. Hamming distance was used in the similarity calculation between the obtained features data and the lesion features from the constructed disease images indexes. According the ranking of similarities, top 5 images were selected as the candidate diagnostic results list of the input crop disease image. And the results were evaluated by some standard criteria, such as precision, recall, etc. The experiments were conducted on cucumber disease images, including: downy mildew, powdery mildew and target spot disease, and rice disease images, including: rice blast, leaf spot and sheath blight. The results showed that the proposed method can achieve the higher retrieval accuracy than traditional SVM method both of cucumber and rice disease images.
机译:根据作物叶片疾病图像的特点,我们提出了一种基于改善倒指数来诊断作物叶片疾病的新图像检索方法。首先,预处理输入作物疾病图像,包括压缩,去噪,增强等,然后提取整个图像中的疾病特征。同时,为了减少反相索引特征向量的存储空间,采用散列方法将反转索引特征向量映射到二进制值。汉明距离用于所获得的特征数据和来自构造疾病图像指标的相似性计算和病变特征。根据相似性的排名,选择前5个图像作为输入作物疾病图像的候选诊断结果列表。结果通过一些标准标准进行评估,例如精确,召回等。该实验在黄瓜疾病图像上进行,包括:柔软的霉菌,白粉病和靶点疾病,以及水稻疾病图像,包括:稻瘟病,叶片斑点和鞘枯萎。结果表明,该方法可以达到比传统的SVM方法的检索精度较高,两种黄瓜和水稻疾病的图像。

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