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Shatter and Gather: Learning Referring Image Segmentation with Text Supervision

About

Referring image segmentation, the task of segmenting any arbitrary entities described in free-form texts, opens up a variety of vision applications. However, manual labeling of training data for this task is prohibitively costly, leading to lack of labeled data for training. We address this issue by a weakly supervised learning approach using text descriptions of training images as the only source of supervision. To this end, we first present a new model that discovers semantic entities in input image and then combines such entities relevant to text query to predict the mask of the referent. We also present a new loss function that allows the model to be trained without any further supervision. Our method was evaluated on four public benchmarks for referring image segmentation, where it clearly outperformed the existing method for the same task and recent open-vocabulary segmentation models on all the benchmarks.

Dongwon Kim, Namyup Kim, Cuiling Lan, Suha Kwak• 2023

Related benchmarks

TaskDatasetResultRank
Referring Image SegmentationRefCOCO (val)
mIoU44.6
259
Referring Expression SegmentationRefCOCO (testA)--
257
Referring Image SegmentationRefCOCO+ (test-B)
mIoU28
252
Referring Image SegmentationRefCOCO (test A)
mIoU1.90e+3
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
Referring Image SegmentationRefCOCO+ (val)
mIoU35.5
179
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