Cyclic Contrastive Knowledge Transfer for Open-Vocabulary Object Detection

ICLR 2025 Conference Submission4226 Authors

Published: 22 Jan 2025, Last Modified: 22 Jan 2025ICLR 2025EveryoneRevisionsBibTeXCC BY 4.0
Keywords: Contrastive Learning, Knowledge Transfer, Open-Vocabulary Object Detection
TL;DR: Our proposed framework constructs a cyclic and dynamic matching between semantic priors and visual region features extracted from VLMs, which forces the detector to closely align with the visual-semantic space of VLMs.
Abstract: In pursuit of detecting unstinted objects that extend beyond predefined categories, prior arts of open-vocabulary object detection (OVD) typically resort to pretrained vision-language models (VLMs) for base-to-novel category generalization. However, to mitigate the misalignment between upstream image-text pretraining and downstream region-level perception, additional supervisions are indispensable, e.g., image-text pairs or pseudo annotations generated via self-training strategies. In this work, we propose CCKT-Det trained without any extra supervision. The proposed framework constructs a cyclic and dynamic knowledge transfer from language queries and visual region features extracted from VLMs, which forces the detector to closely align with the visual-semantic space of VLMs. Specifically, 1) we prefilter and inject semantic priors to guide the learning of queries, and 2) introduce a regional contrastive loss to improve the awareness of queries on novel objects. CCKT-Det can consistently improve performance as the scale of VLMs increases, all while requiring the detector at a moderate level of computation overhead. Comprehensive experimental results demonstrate that our method achieves performance gain of +2.9% and +10.2% AP_{50} over previous state-of-the-arts on the challenging COCO benchmark, both without and with a stronger teacher model.
Primary Area: transfer learning, meta learning, and lifelong learning
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Submission Number: 4226
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