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Papers/MaIL: A Unified Mask-Image-Language Trimodal Network for R...

MaIL: A Unified Mask-Image-Language Trimodal Network for Referring Image Segmentation

Zizhang Li, Mengmeng Wang, Jianbiao Mei, Yong liu

2021-11-21Referring Expression SegmentationSegmentationSemantic SegmentationImage Segmentation
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Abstract

Referring image segmentation is a typical multi-modal task, which aims at generating a binary mask for referent described in given language expressions. Prior arts adopt a bimodal solution, taking images and languages as two modalities within an encoder-fusion-decoder pipeline. However, this pipeline is sub-optimal for the target task for two reasons. First, they only fuse high-level features produced by uni-modal encoders separately, which hinders sufficient cross-modal learning. Second, the uni-modal encoders are pre-trained independently, which brings inconsistency between pre-trained uni-modal tasks and the target multi-modal task. Besides, this pipeline often ignores or makes little use of intuitively beneficial instance-level features. To relieve these problems, we propose MaIL, which is a more concise encoder-decoder pipeline with a Mask-Image-Language trimodal encoder. Specifically, MaIL unifies uni-modal feature extractors and their fusion model into a deep modality interaction encoder, facilitating sufficient feature interaction across different modalities. Meanwhile, MaIL directly avoids the second limitation since no uni-modal encoders are needed anymore. Moreover, for the first time, we propose to introduce instance masks as an additional modality, which explicitly intensifies instance-level features and promotes finer segmentation results. The proposed MaIL set a new state-of-the-art on all frequently-used referring image segmentation datasets, including RefCOCO, RefCOCO+, and G-Ref, with significant gains, 3%-10% against previous best methods. Code will be released soon.

Results

TaskDatasetMetricValueModel
Instance SegmentationRefCoCo valOverall IoU70.13MaIL
Instance SegmentationG-Ref test AOverall IoU62.87MaIL
Instance SegmentationRefCOCO+ valOverall IoU62.23MaIL
Instance SegmentationRefCOCO+ test BOverall IoU56.06MaIL
Instance SegmentationG-Ref valOverall IoU62.45MaIL
Instance SegmentationG-Ref test BOverall IoU61.81MaIL
Instance SegmentationRefCOCO+ testAOverall IoU65.92MaIL
Referring Expression SegmentationRefCoCo valOverall IoU70.13MaIL
Referring Expression SegmentationG-Ref test AOverall IoU62.87MaIL
Referring Expression SegmentationRefCOCO+ valOverall IoU62.23MaIL
Referring Expression SegmentationRefCOCO+ test BOverall IoU56.06MaIL
Referring Expression SegmentationG-Ref valOverall IoU62.45MaIL
Referring Expression SegmentationG-Ref test BOverall IoU61.81MaIL
Referring Expression SegmentationRefCOCO+ testAOverall IoU65.92MaIL

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