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Context-Transformer: Tackling Object Confusion for Few-Shot Detection (2003.07304v1)

Published 16 Mar 2020 in cs.CV, cs.AI, and cs.LG

Abstract: Few-shot object detection is a challenging but realistic scenario, where only a few annotated training images are available for training detectors. A popular approach to handle this problem is transfer learning, i.e., fine-tuning a detector pretrained on a source-domain benchmark. However, such transferred detector often fails to recognize new objects in the target domain, due to low data diversity of training samples. To tackle this problem, we propose a novel Context-Transformer within a concise deep transfer framework. Specifically, Context-Transformer can effectively leverage source-domain object knowledge as guidance, and automatically exploit contexts from only a few training images in the target domain. Subsequently, it can adaptively integrate these relational clues to enhance the discriminative power of detector, in order to reduce object confusion in few-shot scenarios. Moreover, Context-Transformer is flexibly embedded in the popular SSD-style detectors, which makes it a plug-and-play module for end-to-end few-shot learning. Finally, we evaluate Context-Transformer on the challenging settings of few-shot detection and incremental few-shot detection. The experimental results show that, our framework outperforms the recent state-of-the-art approaches.

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Authors (5)
  1. Ze Yang (51 papers)
  2. Yali Wang (78 papers)
  3. Xianyu Chen (14 papers)
  4. Jianzhuang Liu (91 papers)
  5. Yu Qiao (563 papers)
Citations (77)

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