Scale-Equivalent Distillation for Semi-Supervised Object Detection
- URL: http://arxiv.org/abs/2203.12244v1
- Date: Wed, 23 Mar 2022 07:33:37 GMT
- Title: Scale-Equivalent Distillation for Semi-Supervised Object Detection
- Authors: Qiushan Guo, Yao Mu, Jianyu Chen, Tianqi Wang, Yizhou Yu, Ping Luo
- Abstract summary: Recent Semi-Supervised Object Detection (SS-OD) methods are mainly based on self-training, generating hard pseudo-labels by a teacher model on unlabeled data as supervisory signals.
We analyze the challenges these methods meet with the empirical experiment results.
We introduce a novel approach, Scale-Equivalent Distillation (SED), which is a simple yet effective end-to-end knowledge distillation framework robust to large object size variance and class imbalance.
- Score: 57.59525453301374
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Recent Semi-Supervised Object Detection (SS-OD) methods are mainly based on
self-training, i.e., generating hard pseudo-labels by a teacher model on
unlabeled data as supervisory signals. Although they achieved certain success,
the limited labeled data in semi-supervised learning scales up the challenges
of object detection. We analyze the challenges these methods meet with the
empirical experiment results. We find that the massive False Negative samples
and inferior localization precision lack consideration. Besides, the large
variance of object sizes and class imbalance (i.e., the extreme ratio between
background and object) hinder the performance of prior arts. Further, we
overcome these challenges by introducing a novel approach, Scale-Equivalent
Distillation (SED), which is a simple yet effective end-to-end knowledge
distillation framework robust to large object size variance and class
imbalance. SED has several appealing benefits compared to the previous works.
(1) SED imposes a consistency regularization to handle the large scale variance
problem. (2) SED alleviates the noise problem from the False Negative samples
and inferior localization precision. (3) A re-weighting strategy can implicitly
screen the potential foreground regions of the unlabeled data to reduce the
effect of class imbalance. Extensive experiments show that SED consistently
outperforms the recent state-of-the-art methods on different datasets with
significant margins. For example, it surpasses the supervised counterpart by
more than 10 mAP when using 5% and 10% labeled data on MS-COCO.
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