Segmentation of cells with inclusions in plant cross sectional images

R. Janani, A. S. S. Sarma
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Abstract

Computerized analysis of microscopic cross sectional images of plant parts is useful for authentication and quality assessment of plant materials. The analysis involves segmentation of cells in the cross section, extraction of cell features and classification of cells. The segmentation of individual cells plays a major role in realistic estimation of cell parameters for identification and classification of cells. However, the segmentation of the cells is adversely influenced due to presence of cell inclusions like starch grains which are stained with different colored dyes for improved visibility. During segmentation, the stained inclusions touching the boundary of the cells result in boundary cavities which deform the shape of the segmented cells. The present paper describes an image processing technique for accurate segmentation of cells in the presence of stained cell inclusions. The proposed method corrects the shape of individual cells by identifying and selective filling of the boundary cavities resulting from stained inclusions with the help of convex image of the cells and morphological skeleton of the background region. The proposed method is demonstrated by testing a plant cross sectional image containing starch grains.
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植物横切面图像中含有包涵体的细胞分割
植物显微截面图像的计算机分析对植物材料的鉴定和质量评估是有用的。该分析包括细胞横切面的分割、细胞特征的提取和细胞的分类。单个细胞的分割对细胞参数的真实估计以及细胞的识别和分类起着重要的作用。然而,由于细胞内含物(如淀粉粒)的存在,细胞的分割受到不利影响,这些内含物被不同颜色的染料染色以提高可见性。在分割过程中,染色的包涵体接触到细胞的边界,形成边界空腔,使分割后的细胞形状发生变形。本文描述了一种图像处理技术,用于在存在染色细胞内含物的情况下准确分割细胞。该方法利用细胞的凸图像和背景区域的形态骨架,通过识别和选择性填充由染色包涵体引起的边界空腔来校正单个细胞的形状。通过对含有淀粉颗粒的植物横切面图像进行测试,验证了该方法的有效性。
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