CVMar 18, 2022

Local-Global Context Aware Transformer for Language-Guided Video Segmentation

arXiv:2203.09773v2114 citationsh-index: 77Has Code
AI Analysis

This work addresses the challenge of accurately segmenting objects in videos based on natural language descriptions, which is important for applications like video editing and autonomous systems, though it builds incrementally on existing Transformer architectures.

The paper tackles the problem of language-guided video segmentation by proposing Locater, a Transformer-based model with a finite memory mechanism that captures both local and global video context to better align visual and linguistic information, achieving state-of-the-art performance on multiple datasets and winning first place in a video segmentation challenge.

We explore the task of language-guided video segmentation (LVS). Previous algorithms mostly adopt 3D CNNs to learn video representation, struggling to capture long-term context and easily suffering from visual-linguistic misalignment. In light of this, we present Locater (local-global context aware Transformer), which augments the Transformer architecture with a finite memory so as to query the entire video with the language expression in an efficient manner. The memory is designed to involve two components -- one for persistently preserving global video content, and one for dynamically gathering local temporal context and segmentation history. Based on the memorized local-global context and the particular content of each frame, Locater holistically and flexibly comprehends the expression as an adaptive query vector for each frame. The vector is used to query the corresponding frame for mask generation. The memory also allows Locater to process videos with linear time complexity and constant size memory, while Transformer-style self-attention computation scales quadratically with sequence length. To thoroughly examine the visual grounding capability of LVS models, we contribute a new LVS dataset, A2D-S+, which is built upon A2D-S dataset but poses increased challenges in disambiguating among similar objects. Experiments on three LVS datasets and our A2D-S+ show that Locater outperforms previous state-of-the-arts. Further, we won the 1st place in the Referring Video Object Segmentation Track of the 3rd Large-scale Video Object Segmentation Challenge, where Locater served as the foundation for the winning solution. Our code and dataset are available at: https://github.com/leonnnop/Locater

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