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A segmentation method for disease spot images incorporating chrominance in Comprehensive Color Feature and Region Growing

机译:综合彩色特征和地区种植中的疾病点图像的分段方法

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摘要

In this research work, a segmentation method for disease spotted leaves using Advanced Comprehensive Color Feature (ACCF) and Region Growing method captured under real field condition is proposed. The captured diseased leaves have two main challenges one is clutter background and then uneven illumination, this issue makes the robust segmentation lower. Two methods namely Advanced Comprehensive Color Features (ACCF) and Region Growing method are used in this process for segmentation of disease spots to overcome those challenges. The Advanced Comprehensive Color Feature detection consists of different color spaces, color indexes and color to grayscale conversation using Singular Value Decomposition (SVD) which makes more powerful discrimination of disease spots from uneven illumination. In disease spot segmentation, region growing method is used for eliminating clutter background by interactively selecting growing seeds in ACCF map. The morphological operation is applied in the resultant region growing method. Under real field condition, the proposed method gives an average accuracy of 87% in segmentation.
机译:在这项研究中,提出了使用先进的综合彩色特征(ACCF)的疾病发现叶片的分段方法和实地条件下捕获的区域生长方法。捕获的患病叶有两个主要挑战一个是杂乱背景,然后照明不均匀,这个问题使得强大的分割更低。两种方法即先进的综合颜色特征(ACCF)和区域生长方式用于该过程中,用于分割疾病斑点来克服这些挑战。先进的综合彩色特征检测由不同的颜色空间,颜色索引和颜色与使用奇异值分解(SVD)的灰度对话组成,这使得从不均匀的照明中的疾病斑点辨别出更强大的抗病。在疾病点分割中,区域生长方法用于通过在ACCF地图中交互选择种子来消除杂波背景。在所得区域生长方法中施加形态学操作。在实场条件下,所提出的方法在分割中的平均精度为87%。

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