CVAIJul 7, 2022

Bridging the Gap between Object and Image-level Representations for Open-Vocabulary Detection

arXiv:2207.03482v3200 citationsh-index: 95Has Code
AI Analysis

This work improves open-vocabulary object detection for applications requiring recognition of novel objects, though it is incremental by building on existing weak supervision methods.

The paper tackles the misalignment between object-level and image-level representations in open-vocabulary detection by proposing object-centric alignment of CLIP embeddings and a pseudo-labeling process, achieving a 36.6 AP50 on novel classes in COCO (an 8.2 gain) and surpassing ViLD by 5.0 mask AP for rare categories in LVIS.

Existing open-vocabulary object detectors typically enlarge their vocabulary sizes by leveraging different forms of weak supervision. This helps generalize to novel objects at inference. Two popular forms of weak-supervision used in open-vocabulary detection (OVD) include pretrained CLIP model and image-level supervision. We note that both these modes of supervision are not optimally aligned for the detection task: CLIP is trained with image-text pairs and lacks precise localization of objects while the image-level supervision has been used with heuristics that do not accurately specify local object regions. In this work, we propose to address this problem by performing object-centric alignment of the language embeddings from the CLIP model. Furthermore, we visually ground the objects with only image-level supervision using a pseudo-labeling process that provides high-quality object proposals and helps expand the vocabulary during training. We establish a bridge between the above two object-alignment strategies via a novel weight transfer function that aggregates their complimentary strengths. In essence, the proposed model seeks to minimize the gap between object and image-centric representations in the OVD setting. On the COCO benchmark, our proposed approach achieves 36.6 AP50 on novel classes, an absolute 8.2 gain over the previous best performance. For LVIS, we surpass the state-of-the-art ViLD model by 5.0 mask AP for rare categories and 3.4 overall. Code: https://github.com/hanoonaR/object-centric-ovd.

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