Cell Tracking-by-detection using Elliptical Bounding Boxes

7 Oct 2023  ยท  Lucas N. Kirsten, Clรกudio R. Jung ยท

Cell detection and tracking are paramount for bio-analysis. Recent approaches rely on the tracking-by-model evolution paradigm, which usually consists of training end-to-end deep learning models to detect and track the cells on the frames with promising results. However, such methods require extensive amounts of annotated data, which is time-consuming to obtain and often requires specialized annotators. This work proposes a new approach based on the classical tracking-by-detection paradigm that alleviates the requirement of annotated data. More precisely, it approximates the cell shapes as oriented ellipses and then uses generic-purpose oriented object detectors to identify the cells in each frame. We then rely on a global data association algorithm that explores temporal cell similarity using probability distance metrics, considering that the ellipses relate to two-dimensional Gaussian distributions. Our results show that our method can achieve detection and tracking results competitively with state-of-the-art techniques that require considerably more extensive data annotation. Our code is available at: https://github.com/LucasKirsten/Deep-Cell-Tracking-EBB.

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Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Cell Detection Fluo-N2DH-GOWT1 LC-UFRGS-BR-W DET 0.970 # 1
TRA 0.959 # 1
Cell Detection Fluo-N2DH-GOWT1 LC-UFRGS-BR DET 0.925 # 2
TRA 0.922 # 2
Cell Detection Fluo-N2DL-HeLa LC-UFRGS-BR-W DET 0.989 # 1
TRA 0.988 # 1
Cell Detection Fluo-N2DL-HeLa LC-UFRGS-BR DET 0.986 # 2
TRA 0.984 # 2
Cell Detection PhC-C2DH-U373 LC-UFRGS-BR-W DET 0.979 # 1
TRA 0.976 # 1
Cell Detection PhC-C2DH-U373 LC-UFRGS-BR DET 0.914 # 2
TRA 0.909 # 2

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