Joint Multi-frame Detection and Segmentation for Multi-cell Tracking
Tracking living cells in video sequence is difficult, because of cell morphology and high similarities between cells. Tracking-by-detection methods are widely used in multi-cell tracking. We perform multi-cell tracking based on the cell centroid detection, and the performance of the detector has hig...
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Zusammenfassung: | Tracking living cells in video sequence is difficult, because of cell
morphology and high similarities between cells. Tracking-by-detection methods
are widely used in multi-cell tracking. We perform multi-cell tracking based on
the cell centroid detection, and the performance of the detector has high
impact on tracking performance. In this paper, UNet is utilized to extract
inter-frame and intra-frame spatio-temporal information of cells. Detection
performance of cells in mitotic phase is improved by multi-frame input. Good
detection results facilitate multi-cell tracking. A mitosis detection algorithm
is proposed to detect cell mitosis and the cell lineage is built up. Another
UNet is utilized to acquire primary segmentation. Jointly using detection and
primary segmentation, cells can be fine segmented in highly dense cell
population. Experiments are conducted to evaluate the effectiveness of our
method, and results show its state-of-the-art performance. |
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DOI: | 10.48550/arxiv.1906.10886 |