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Papers/Universal Segmentation at Arbitrary Granularity with Langu...

Universal Segmentation at Arbitrary Granularity with Language Instruction

Yong liu, Cairong Zhang, Yitong Wang, Jiahao Wang, Yujiu Yang, Yansong Tang

2023-12-04CVPR 2024 1Referring Expression SegmentationSegmentation
PaperPDFCode(official)Code(official)

Abstract

This paper aims to achieve universal segmentation of arbitrary semantic level. Despite significant progress in recent years, specialist segmentation approaches are limited to specific tasks and data distribution. Retraining a new model for adaptation to new scenarios or settings takes expensive computation and time cost, which raises the demand for versatile and universal segmentation model that can cater to various granularity. Although some attempts have been made for unifying different segmentation tasks or generalization to various scenarios, limitations in the definition of paradigms and input-output spaces make it difficult for them to achieve accurate understanding of content at arbitrary granularity. To this end, we present UniLSeg, a universal segmentation model that can perform segmentation at any semantic level with the guidance of language instructions. For training UniLSeg, we reorganize a group of tasks from original diverse distributions into a unified data format, where images with texts describing segmentation targets as input and corresponding masks are output. Combined with a automatic annotation engine for utilizing numerous unlabeled data, UniLSeg achieves excellent performance on various tasks and settings, surpassing both specialist and unified segmentation models.

Results

TaskDatasetMetricValueModel
Instance SegmentationRefCoCo valOverall IoU81.74UniLSeg-100
Instance SegmentationRefer-YouTube-VOS (2021 public validation)F67UniLSeg-100
Instance SegmentationRefer-YouTube-VOS (2021 public validation)J62.8UniLSeg-100
Instance SegmentationRefer-YouTube-VOS (2021 public validation)J&F64.9UniLSeg-100
Instance SegmentationRefCOCOg-testOverall IoU80.54UniLSeg-100
Instance SegmentationRefCOCOg-testOverall IoU79.47UniLSeg-20
Instance SegmentationRefCOCO+ valOverall IoU73.18UniLSeg-100
Instance SegmentationRefCOCO+ valOverall IoU72.7UniLSeg-20
Instance SegmentationRefCOCO+ test BOverall IoU68.15UniLSeg-100
Instance SegmentationRefCOCO+ test BOverall IoU66.99UniLSeg-20
Instance SegmentationRefCOCO+ testAOverall IoU78.29UniLSeg-100
Instance SegmentationRefCOCO+ testAOverall IoU77.02UniLSeg-20
Instance SegmentationRefCOCOg-valOverall IoU79.27UniLSeg-100
Instance SegmentationRefCOCOg-valOverall IoU78.41UniLSeg-20
Referring Expression SegmentationRefCoCo valOverall IoU81.74UniLSeg-100
Referring Expression SegmentationRefer-YouTube-VOS (2021 public validation)F67UniLSeg-100
Referring Expression SegmentationRefer-YouTube-VOS (2021 public validation)J62.8UniLSeg-100
Referring Expression SegmentationRefer-YouTube-VOS (2021 public validation)J&F64.9UniLSeg-100
Referring Expression SegmentationRefCOCOg-testOverall IoU80.54UniLSeg-100
Referring Expression SegmentationRefCOCOg-testOverall IoU79.47UniLSeg-20
Referring Expression SegmentationRefCOCO+ valOverall IoU73.18UniLSeg-100
Referring Expression SegmentationRefCOCO+ valOverall IoU72.7UniLSeg-20
Referring Expression SegmentationRefCOCO+ test BOverall IoU68.15UniLSeg-100
Referring Expression SegmentationRefCOCO+ test BOverall IoU66.99UniLSeg-20
Referring Expression SegmentationRefCOCO+ testAOverall IoU78.29UniLSeg-100
Referring Expression SegmentationRefCOCO+ testAOverall IoU77.02UniLSeg-20
Referring Expression SegmentationRefCOCOg-valOverall IoU79.27UniLSeg-100
Referring Expression SegmentationRefCOCOg-valOverall IoU78.41UniLSeg-20

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