2022
DOI: 10.48550/arxiv.2203.02100
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Learning Incrementally to Segment Multiple Organs in a CT Image

Abstract: There exists a large number of datasets for organ segmentation, which are partially annotated and sequentially constructed. A typical dataset is constructed at a certain time by curating medical images and annotating the organs of interest. In other words, new datasets with annotations of new organ categories are built over time. To unleash the potential behind these partially labeled, sequentially-constructed datasets, we propose to incrementally learn a multi-organ segmentation model. In each incremental lea… Show more

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