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Object-Agnostic Transformers for Video Referring Segmentation

Xu Yang, Hao Wang, De Xie, Cheng Deng, Dacheng Tao

2022IEEE Transactions on Image Processing19 citationsDOI

Abstract

Video referring segmentation focuses on segmenting out the object in a video based on the corresponding textual description. Previous works have primarily tackled this task by devising two crucial parts, an intra-modal module for context modeling and an inter-modal module for heterogeneous alignment. However, there are two essential drawbacks of this approach: (1) it lacks joint learning of context modeling and heterogeneous alignment, leading to insufficient interactions among input elements; (2) both modules require task-specific expert knowledge to design, which severely limits the flexibility and generality of prior methods. To address these problems, we here propose a novel Object-Agnostic Transformer-based Network, called OATNet, that simultaneously conducts intra-modal and inter-modal learning for video referring segmentation, without the aid of object detection or category-specific pixel labeling. More specifically, we first directly feed the sequence of textual tokens and visual tokens (pixels rather than detected object bounding boxes) into a multi-modal encoder, where context and alignment are simultaneously and effectively explored. We then design a novel cascade segmentation network to decouple our task into coarse-grained segmentation and fine-grained refinement. Moreover, considering the difficulty of samples, a more balanced metric is provided to better diagnose the performance of the proposed method. Extensive experiments on two popular datasets, A2D Sentences and J-HMDB Sentences, demonstrate that our proposed approach noticeably outperforms state-of-the-art methods.

Topics & Concepts

Computer scienceSegmentationArtificial intelligenceTransformerEncoderPixelComputer visionObject detectionModalContext modelPattern recognition (psychology)Image segmentationObject (grammar)PhysicsPolymer chemistryQuantum mechanicsOperating systemChemistryVoltageMultimodal Machine Learning ApplicationsHuman Pose and Action RecognitionVideo Analysis and Summarization