CVCLDec 4, 2021

LAVT: Language-Aware Vision Transformer for Referring Image Segmentation

arXiv:2112.02244v2499 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of accurately segmenting objects based on natural language descriptions, which is crucial for vision-language applications, though it is incremental in improving cross-modal alignment.

The paper tackles referring image segmentation by proposing early fusion of linguistic and visual features in a vision Transformer encoder, achieving state-of-the-art results on RefCOCO, RefCOCO+, and G-Ref datasets with significant margins.

Referring image segmentation is a fundamental vision-language task that aims to segment out an object referred to by a natural language expression from an image. One of the key challenges behind this task is leveraging the referring expression for highlighting relevant positions in the image. A paradigm for tackling this problem is to leverage a powerful vision-language ("cross-modal") decoder to fuse features independently extracted from a vision encoder and a language encoder. Recent methods have made remarkable advancements in this paradigm by exploiting Transformers as cross-modal decoders, concurrent to the Transformer's overwhelming success in many other vision-language tasks. Adopting a different approach in this work, we show that significantly better cross-modal alignments can be achieved through the early fusion of linguistic and visual features in intermediate layers of a vision Transformer encoder network. By conducting cross-modal feature fusion in the visual feature encoding stage, we can leverage the well-proven correlation modeling power of a Transformer encoder for excavating helpful multi-modal context. This way, accurate segmentation results are readily harvested with a light-weight mask predictor. Without bells and whistles, our method surpasses the previous state-of-the-art methods on RefCOCO, RefCOCO+, and G-Ref by large margins.

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