CVLGFeb 18, 2021

Unbiased Teacher for Semi-Supervised Object Detection

arXiv:2102.09480v1611 citations
Originality Highly original
AI Analysis

This addresses the problem of reducing annotation effort for object detection, which is more costly than image classification, and is incremental as it builds on existing semi-supervised methods.

The paper tackles the pseudo-labeling bias issue in semi-supervised object detection by introducing Unbiased Teacher, which improves state-of-the-art methods by up to 10 mAP on MS-COCO with limited labeled data.

Semi-supervised learning, i.e., training networks with both labeled and unlabeled data, has made significant progress recently. However, existing works have primarily focused on image classification tasks and neglected object detection which requires more annotation effort. In this work, we revisit the Semi-Supervised Object Detection (SS-OD) and identify the pseudo-labeling bias issue in SS-OD. To address this, we introduce Unbiased Teacher, a simple yet effective approach that jointly trains a student and a gradually progressing teacher in a mutually-beneficial manner. Together with a class-balance loss to downweight overly confident pseudo-labels, Unbiased Teacher consistently improved state-of-the-art methods by significant margins on COCO-standard, COCO-additional, and VOC datasets. Specifically, Unbiased Teacher achieves 6.8 absolute mAP improvements against state-of-the-art method when using 1% of labeled data on MS-COCO, achieves around 10 mAP improvements against the supervised baseline when using only 0.5, 1, 2% of labeled data on MS-COCO.

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