Cascade Detector Analysis and Application to Biomedical Microscopy
Cascade Detector Analysis and Application to Biomedical Microscopy
As both computer vision models and biomedical datasets grow in size, there is an increasing need for efficient inference algorithms. We utilize cascade detectors to efficiently identify sparse objects in multiresolution images. Given an object's prevalence and a set of detectors at different resolutions with known accuracies, we derive the accuracy, and expected number of classifier calls by a cascade detector. These results generalize across number of dimensions and number of cascade levels. Finally, we compare one- and two-level detectors in fluorescent cell detection, organelle segmentation, and tissue segmentation across various microscopy modalities. We show that the multi-level detector achieves comparable performance in 30-75% less time. Our work is compatible with a variety of computer vision models and data domains.
Shashata Sawmya、Nir Shavit、Thomas L. Athey
生物科学研究方法、生物科学研究技术计算技术、计算机技术细胞生物学
Shashata Sawmya,Nir Shavit,Thomas L. Athey.Cascade Detector Analysis and Application to Biomedical Microscopy[EB/OL].(2025-04-30)[2025-06-06].https://arxiv.org/abs/2504.21598.点此复制
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