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GroPrompt: Efficient Grounded Prompting and Adaptation for Referring Video Object Segmentation

About

Referring Video Object Segmentation (RVOS) aims to segment the object referred to by the query sentence throughout the entire video. Most existing methods require end-to-end training with dense mask annotations, which could be computation-consuming and less scalable. In this work, we aim to efficiently adapt foundation segmentation models for addressing RVOS from weak supervision with the proposed Grounded Prompting (GroPrompt) framework. More specifically, we propose Text-Aware Prompt Contrastive Learning (TAP-CL) to enhance the association between the position prompts and the referring sentences with only box supervisions, including Text-Contrastive Prompt Learning (TextCon) and Modality-Contrastive Prompt Learning (ModalCon) at frame level and video level, respectively. With the proposed TAP-CL, our GroPrompt framework can generate temporal-consistent yet text-aware position prompts describing locations and movements for the referred object from the video. The experimental results in the standard RVOS benchmarks (Ref-YouTube-VOS, Ref-DAVIS17, A2D-Sentences, and JHMDB-Sentences) demonstrate the competitive performance of our proposed GroPrompt framework given only bounding box weak supervisions.

Ci-Siang Lin, I-Jieh Liu, Min-Hung Chen, Chien-Yi Wang, Sifei Liu, Yu-Chiang Frank Wang• 2024

Related benchmarks

TaskDatasetResultRank
Referring Video Object SegmentationRef-YouTube-VOS (val)
J&F Score65.5
200
Referring Video Object SegmentationRef-DAVIS 2017 (val)
J&F70.6
178
Referring Video Object SegmentationJHMDB Sentences (test)
Overall IoU0.733
83
Referring Video Object SegmentationA2D-Sentences (val)
Overall IoU77.3
11
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