CVAug 2, 2024

An Efficient and Effective Transformer Decoder-Based Framework for Multi-Task Visual Grounding

arXiv:2408.01120v128 citationsh-index: 2Has Code
Originality Incremental advance
AI Analysis

This addresses efficiency bottlenecks in visual grounding for complex scenes like conversation-based reasoning segmentation, though it is an incremental improvement on existing methods.

The paper tackles the high computational cost of Transformer-based visual grounding methods by proposing an efficient framework using Transformer Decoder for linear scaling with language length and parameter-free background token reduction, achieving competitive performance on benchmarks.

Most advanced visual grounding methods rely on Transformers for visual-linguistic feature fusion. However, these Transformer-based approaches encounter a significant drawback: the computational costs escalate quadratically due to the self-attention mechanism in the Transformer Encoder, particularly when dealing with high-resolution images or long context sentences. This quadratic increase in computational burden restricts the applicability of visual grounding to more intricate scenes, such as conversation-based reasoning segmentation, which involves lengthy language expressions. In this paper, we propose an efficient and effective multi-task visual grounding (EEVG) framework based on Transformer Decoder to address this issue, which reduces the cost in both language and visual aspects. In the language aspect, we employ the Transformer Decoder to fuse visual and linguistic features, where linguistic features are input as memory and visual features as queries. This allows fusion to scale linearly with language expression length. In the visual aspect, we introduce a parameter-free approach to reduce computation by eliminating background visual tokens based on attention scores. We then design a light mask head to directly predict segmentation masks from the remaining sparse feature maps. Extensive results and ablation studies on benchmarks demonstrate the efficiency and effectiveness of our approach. Code is available in https://github.com/chenwei746/EEVG.

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