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Cross-Modal Self-Attention Network for Referring Image Segmentation

About

We consider the problem of referring image segmentation. Given an input image and a natural language expression, the goal is to segment the object referred by the language expression in the image. Existing works in this area treat the language expression and the input image separately in their representations. They do not sufficiently capture long-range correlations between these two modalities. In this paper, we propose a cross-modal self-attention (CMSA) module that effectively captures the long-range dependencies between linguistic and visual features. Our model can adaptively focus on informative words in the referring expression and important regions in the input image. In addition, we propose a gated multi-level fusion module to selectively integrate self-attentive cross-modal features corresponding to different levels in the image. This module controls the information flow of features at different levels. We validate the proposed approach on four evaluation datasets. Our proposed approach consistently outperforms existing state-of-the-art methods.

Linwei Ye, Mrigank Rochan, Zhi Liu, Yang Wang• 2019

Related benchmarks

TaskDatasetResultRank
Referring Image SegmentationRefCOCO (val)
mIoU58.32
259
Referring Expression SegmentationRefCOCO (testA)--
257
Referring Image SegmentationRefCOCO+ (test-B)
mIoU37.89
252
Referring Video Object SegmentationRef-YouTube-VOS (val)
J&F Score36.4
244
Referring Image SegmentationRefCOCO (test A)
mIoU60.61
230
Referring Expression SegmentationRefCOCO+ (testA)--
230
Referring Expression SegmentationRefCOCO+ (val)--
223
Referring Expression SegmentationRefCOCO (testB)--
213
Referring Expression SegmentationRefCOCO (val)--
212
Referring Expression SegmentationRefCOCO+ (testB)--
210
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