Overcoming Catastrophic Forgetting in Incremental Object Detection via Elastic Response Distillation

CVPR 2022  ·  Tao Feng, Mang Wang, Hangjie Yuan ·

Traditional object detectors are ill-equipped for incremental learning. However, fine-tuning directly on a well-trained detection model with only new data will lead to catastrophic forgetting. Knowledge distillation is a flexible way to mitigate catastrophic forgetting. In Incremental Object Detection (IOD), previous work mainly focuses on distilling for the combination of features and responses. However, they under-explore the information that contains in responses. In this paper, we propose a response-based incremental distillation method, dubbed Elastic Response Distillation (ERD), which focuses on elastically learning responses from the classification head and the regression head. Firstly, our method transfers category knowledge while equipping student detector with the ability to retain localization information during incremental learning. In addition, we further evaluate the quality of all locations and provide valuable responses by the Elastic Response Selection (ERS) strategy. Finally, we elucidate that the knowledge from different responses should be assigned with different importance during incremental distillation. Extensive experiments conducted on MS COCO demonstrate our method achieves state-of-the-art result, which substantially narrows the performance gap towards full training.

PDF Abstract CVPR 2022 PDF CVPR 2022 Abstract

Datasets


  Add Datasets introduced or used in this paper
Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Class-Incremental Object Detection COCO 2017 (40+40) ERD Detection: Full (mAP@0.5) 36.9 # 1
Class-Incremental Object Detection COCO 2017 (50+30) ERD Detection: Full (mAP@0.5) 36.6 # 1
Class-Incremental Object Detection COCO 2017 (60+20) ERD Detection: Full (mAP@0.5) 35.8 # 1
Class-Incremental Object Detection COCO 2017 (70+10) ERD Detection: Full (mAP@0.5) 34.9 # 3

Methods