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Open Vocabulary Object Detection with Pseudo Bounding-Box Labels

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arxiv 2111.09452 v3 pith:OHPQZWBM submitted 2021-11-18 cs.CV

Open Vocabulary Object Detection with Pseudo Bounding-Box Labels

classification cs.CV
keywords categoriesobjecttrainingbounding-boxbasedetectionmethodnovel
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Despite great progress in object detection, most existing methods work only on a limited set of object categories, due to the tremendous human effort needed for bounding-box annotations of training data. To alleviate the problem, recent open vocabulary and zero-shot detection methods attempt to detect novel object categories beyond those seen during training. They achieve this goal by training on a pre-defined base categories to induce generalization to novel objects. However, their potential is still constrained by the small set of base categories available for training. To enlarge the set of base classes, we propose a method to automatically generate pseudo bounding-box annotations of diverse objects from large-scale image-caption pairs. Our method leverages the localization ability of pre-trained vision-language models to generate pseudo bounding-box labels and then directly uses them for training object detectors. Experimental results show that our method outperforms the state-of-the-art open vocabulary detector by 8% AP on COCO novel categories, by 6.3% AP on PASCAL VOC, by 2.3% AP on Objects365 and by 2.8% AP on LVIS. Code is available at https://github.com/salesforce/PB-OVD.

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