Bottleneck detection by slope difference distribution: a robust approach for separating overlapped cells
ZhenZhou Wang

TL;DR
This paper introduces a robust method for separating overlapped cells in images by detecting bottleneck points through slope difference distribution, improving accuracy over existing techniques.
Contribution
The paper presents a novel bottleneck detection approach using slope difference distribution for separating overlapped cells, demonstrating superior robustness compared to prior methods.
Findings
The proposed method effectively separates overlapped cells in various datasets.
It outperforms existing state-of-the-art techniques in robustness.
Experimental results confirm its accuracy and reliability.
Abstract
To separate the overlapped cells, a bottleneck detection approach is proposed in this paper. The cell image is segmented by slope difference distribution (SDD) threshold selection. For each segmented binary clump, its one-dimensional boundary is computed as the distance distribution between its centroid and each point on the two-dimensional boundary. The bottleneck points of the one-dimensional boundary is detected by SDD and then transformed back into two-dimensional bottleneck points. Two largest concave parts of the binary clump are used to select the valid bottleneck points. Two bottleneck points from different concave parts with the minimum Euclidean distance is connected to separate the binary clump with minimum-cut. The binary clumps are separated iteratively until the number of computed concave parts is smaller than two. We use four types of open-accessible cell datasets to…
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Taxonomy
TopicsCell Image Analysis Techniques · AI in cancer detection · Digital Imaging for Blood Diseases
