Incremental Object Detection With Image-Level Labels | IEEE Journals & Magazine | IEEE Xplore

Incremental Object Detection With Image-Level Labels


Impact Statement:Incremental learning is a popular technology in the online model update. They reduce the load on the acquisition of historical data and offer efficient fine-tuning techni...Show More

Abstract:

Incremental object detection (IOD) aims to achieve simultaneous prediction of old and new samples on localization and classification when new concepts are provided. It is...Show More
Impact Statement:
Incremental learning is a popular technology in the online model update. They reduce the load on the acquisition of historical data and offer efficient fine-tuning techniques to the continual system. While recent detection research utilizes 100% class and bounding box labeling for the implementation of incremental optimization, this article analyzes the corresponding significance of classification and localization and introduces a multibranch decoupling scheme to facilitate the subsequent updates. With a significant increase of 2% in incremental performance after adopting our scheme, the technology is ready to support the incremental object detection process under the condition of both low annotation cost and high recognition efficiency.

Abstract:

Incremental object detection (IOD) aims to achieve simultaneous prediction of old and new samples on localization and classification when new concepts are provided. It is a challenging task due to the need for a joint interpretation of semantic and spatial information. While the existing work accomplishes the detector generalization with the help of annotated sample classes and bounding boxes, this article presents one astonishing finding on the unnecessity of new bounding boxes, which will significantly reduce the annotation cost and condition constraints in IOD. To enable the incremental detection process with image-level labels, we propose a multibranch decoupling scheme in which the representation, classification, and regression branches are customized to accommodate new concepts with class labels with different semantic levels. The regression branch is first frozen to ensure generalizable localization while maintaining the stability of representation optimization. Then, the repres...
Published in: IEEE Transactions on Artificial Intelligence ( Volume: 5, Issue: 5, May 2024)
Page(s): 2331 - 2341
Date of Publication: 25 September 2023
Electronic ISSN: 2691-4581

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