2021
DOI: 10.3389/fmed.2021.767625
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A Robust Training Method for Pathological Cellular Detector via Spatial Loss Calibration

Abstract: Computer-aided diagnosis of pathological images usually requires detecting and examining all positive cells for accurate diagnosis. However, cellular datasets tend to be sparsely annotated due to the challenge of annotating all the cells. However, training detectors on sparse annotations may be misled by miscalculated losses, limiting the detection performance. Thus, efficient and reliable methods for training cellular detectors on sparse annotations are in higher demand than ever. In this study, we propose a … Show more

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