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Papers/Unsupervised Discovery of the Long-Tail in Instance Segmen...

Unsupervised Discovery of the Long-Tail in Instance Segmentation Using Hierarchical Self-Supervision

Zhenzhen Weng, Mehmet Giray Ogut, Shai Limonchik, Serena Yeung

2021-04-02CVPR 2021 1SegmentationSemantic SegmentationInstance SegmentationNovel Object Detection
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Abstract

Instance segmentation is an active topic in computer vision that is usually solved by using supervised learning approaches over very large datasets composed of object level masks. Obtaining such a dataset for any new domain can be very expensive and time-consuming. In addition, models trained on certain annotated categories do not generalize well to unseen objects. The goal of this paper is to propose a method that can perform unsupervised discovery of long-tail categories in instance segmentation, through learning instance embeddings of masked regions. Leveraging rich relationship and hierarchical structure between objects in the images, we propose self-supervised losses for learning mask embeddings. Trained on COCO dataset without additional annotations of the long-tail objects, our model is able to discover novel and more fine-grained objects than the common categories in COCO. We show that the model achieves competitive quantitative results on LVIS as compared to the supervised and partially supervised methods.

Results

TaskDatasetMetricValueModel
2D Object DetectionLVIS v1.0 valAll mAP1.62Weng et al. Weng et al. (2021)*
2D Object DetectionLVIS v1.0 valKnown mAP17.85Weng et al. Weng et al. (2021)*
2D Object DetectionLVIS v1.0 valNovel mAP0.27Weng et al. Weng et al. (2021)*

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