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A novel segmentation algorithm for clustered slender-particles.

机译:一种新颖的簇状细长粒子分割算法。

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摘要

A novel algorithm based on watershed and concavities is proposed to segment the clustered slender-particles, such as the clustered rice kernels. First, the distance and watershed transform is used to the binary image of clustered slender-particles. Secondly, the watershed post-processing of over-segmentation is dealt with by utilizing concavity features of related shapes. Thirdly, the candidate splitting lines of touching clusters is found by matching the concavities to the un-segmentations left. Finally, the supplementary criterions are applied, such as the shortest distance, the opposite orientation, the splitting path orientation, etc., to determine whether a candidate splitting line can be accepted or not. Experimental results show that the algorithm can segment the large-scale clustered slender-particles efficiently, where such a quantitative analysis was previously infeasible
机译:提出了一种基于分水岭和凹面的新算法,对聚类的细长粒子,如聚类的稻米粒进行分割。首先,将距离和分水岭变换用于群集的细长粒子的二值图像。其次,利用相关形状的凹度特征处理过分块的分水岭。第三,通过将凹面与剩余的未分割相匹配来找到候选的接触簇的分割线。最后,应用补充标准,例如最短距离,相反方向,分裂路径方向等,以确定是否可以接受候选分裂线。实验结果表明,该算法可以有效地分割大型簇状细长粒子,而以前这种定量分析是不可行的

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