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Papers/Referred by Multi-Modality: A Unified Temporal Transformer...

Referred by Multi-Modality: A Unified Temporal Transformer for Video Object Segmentation

Shilin Yan, Renrui Zhang, Ziyu Guo, Wenchao Chen, Wei zhang, Hongyang Li, Yu Qiao, Hao Dong, Zhongjiang He, Peng Gao

2023-05-25Referring Video Object SegmentationReferring Expression SegmentationSemantic SegmentationVideo Object SegmentationVideo Semantic Segmentation
PaperPDFCode(official)

Abstract

Recently, video object segmentation (VOS) referred by multi-modal signals, e.g., language and audio, has evoked increasing attention in both industry and academia. It is challenging for exploring the semantic alignment within modalities and the visual correspondence across frames. However, existing methods adopt separate network architectures for different modalities, and neglect the inter-frame temporal interaction with references. In this paper, we propose MUTR, a Multi-modal Unified Temporal transformer for Referring video object segmentation. With a unified framework for the first time, MUTR adopts a DETR-style transformer and is capable of segmenting video objects designated by either text or audio reference. Specifically, we introduce two strategies to fully explore the temporal relations between videos and multi-modal signals. Firstly, for low-level temporal aggregation before the transformer, we enable the multi-modal references to capture multi-scale visual cues from consecutive video frames. This effectively endows the text or audio signals with temporal knowledge and boosts the semantic alignment between modalities. Secondly, for high-level temporal interaction after the transformer, we conduct inter-frame feature communication for different object embeddings, contributing to better object-wise correspondence for tracking along the video. On Ref-YouTube-VOS and AVSBench datasets with respective text and audio references, MUTR achieves +4.2% and +8.7% J&F improvements to state-of-the-art methods, demonstrating our significance for unified multi-modal VOS. Code is released at https://github.com/OpenGVLab/MUTR.

Results

TaskDatasetMetricValueModel
VideoRef-DAVIS17F71.3MUTR
VideoRef-DAVIS17J64.8MUTR
VideoRef-DAVIS17J&F68MUTR
VideoLong-RVOSJ&F42.2MUTR
VideoLong-RVOStIoU70.4MUTR
VideoLong-RVOSvIoU36.2MUTR
Instance SegmentationRefer-YouTube-VOS (2021 public validation)F70.4MUTR
Instance SegmentationRefer-YouTube-VOS (2021 public validation)J66.4MUTR
Instance SegmentationRefer-YouTube-VOS (2021 public validation)J&F68.4MUTR
Instance SegmentationReferring Expressions for DAVIS 2016 & 2017F71.3MUTR
Instance SegmentationReferring Expressions for DAVIS 2016 & 2017J64.8MUTR
Instance SegmentationReferring Expressions for DAVIS 2016 & 2017J&F 1st frame68MUTR
Video Object SegmentationRef-DAVIS17F71.3MUTR
Video Object SegmentationRef-DAVIS17J64.8MUTR
Video Object SegmentationRef-DAVIS17J&F68MUTR
Video Object SegmentationLong-RVOSJ&F42.2MUTR
Video Object SegmentationLong-RVOStIoU70.4MUTR
Video Object SegmentationLong-RVOSvIoU36.2MUTR
Referring Expression SegmentationRefer-YouTube-VOS (2021 public validation)F70.4MUTR
Referring Expression SegmentationRefer-YouTube-VOS (2021 public validation)J66.4MUTR
Referring Expression SegmentationRefer-YouTube-VOS (2021 public validation)J&F68.4MUTR
Referring Expression SegmentationReferring Expressions for DAVIS 2016 & 2017F71.3MUTR
Referring Expression SegmentationReferring Expressions for DAVIS 2016 & 2017J64.8MUTR
Referring Expression SegmentationReferring Expressions for DAVIS 2016 & 2017J&F 1st frame68MUTR

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