Segmentation of plant disease spots using automatic SRG algorithm: a look up table approach

R. K. Sarkar, A. Pramanik
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引用次数: 20

Abstract

Image segmentation is the key component of identifying plant leaf diseases. Most of the available techniques for leaf disease segmentation use grayscale values. In this paper, an automatic seeded region growing (SRG) algorithm for coloured images proposed by Y. Shih and S. Cheng is modified for segmentation of plant leaf diseases. The colour difference between adjacent regions is computed using Euclidean distance metric in the algorithm. This paper proposes a novel two dimensional look up table for labeling the neighbours for region merging. The look up table is created by traversing the image vertically and horizontally and any change in the labels of pixel is noted in the table. The incorporation of the table helps in better organization in region merging step and helps in further segmentation of the image. It must be noted that the performance of coloured image segmentation largely depends on the colour space chosen. The algorithm is first implemented in the YCbCr colour space and then implemented in other colour spaces like YCgCr, CIELAB and RGB to check for the best performance of the segmentation algorithm. Experimental results show that the SRG algorithm along with the proposed modification for region merging give good results in the YCbCr compared to other colour spaces for plant leaf disease segmentation.
基于自动SRG算法的植物病斑分割:一种查表方法
图像分割是植物叶片病害识别的关键环节。大多数可用的叶病分割技术使用灰度值。本文对由Y. Shih和S. Cheng提出的彩色图像自动种子区域生长(SRG)算法进行了改进,用于植物叶片病害的分割。该算法利用欧几里得距离度量来计算相邻区域之间的色差。本文提出了一种新的二维查找表,用于标记区域合并中的邻域。查找表是通过垂直和水平遍历图像创建的,并且在表中记录像素标签的任何更改。表格的加入有助于更好地组织区域合并步骤,有助于进一步分割图像。必须指出的是,彩色图像分割的性能在很大程度上取决于所选择的色彩空间。该算法首先在YCbCr颜色空间中实现,然后在YCgCr, CIELAB和RGB等其他颜色空间中实现,以检查分割算法的最佳性能。实验结果表明,与其他颜色空间相比,SRG算法和提出的区域合并改进在YCbCr中具有良好的植物叶片病害分割效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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