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Few-Shot Object Detection with Sparse Context Transformers

Authors :
Mei, Jie
Jiu, Mingyuan
Sahbi, Hichem
Jiang, Xiaoheng
Xu, Mingliang
Publication Year :
2024

Abstract

Few-shot detection is a major task in pattern recognition which seeks to localize objects using models trained with few labeled data. One of the mainstream few-shot methods is transfer learning which consists in pretraining a detection model in a source domain prior to its fine-tuning in a target domain. However, it is challenging for fine-tuned models to effectively identify new classes in the target domain, particularly when the underlying labeled training data are scarce. In this paper, we devise a novel sparse context transformer (SCT) that effectively leverages object knowledge in the source domain, and automatically learns a sparse context from only few training images in the target domain. As a result, it combines different relevant clues in order to enhance the discrimination power of the learned detectors and reduce class confusion. We evaluate the proposed method on two challenging few-shot object detection benchmarks, and empirical results show that the proposed method obtains competitive performance compared to the related state-of-the-art.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2402.09315
Document Type :
Working Paper