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Large-Scale Unsupervised Semantic Segmentation

Shanghua Gao, Zhong-Yu Li, Ming–Hsuan Yang, Ming‐Ming Cheng, Junwei Han, Philip H. S. Torr

2022IEEE Transactions on Pattern Analysis and Machine Intelligence79 citationsDOI

Abstract

Empowered by large datasets, e.g., ImageNet and MS COCO, unsupervised learning on large-scale data has enabled significant advances for classification tasks. However, whether the large-scale unsupervised semantic segmentation can be achieved remains unknown. There are two major challenges: i) we need a large-scale benchmark for assessing algorithms; ii) we need to develop methods to simultaneously learn category and shape representation in an unsupervised manner. In this work, we propose a new problem of large-scale unsupervised semantic segmentation (LUSS) with a newly created benchmark dataset to help the research progress. Building on the ImageNet dataset, we propose the ImageNet-S dataset with 1.2 million training images and 50k high-quality semantic segmentation annotations for evaluation. Our benchmark has a high data diversity and a clear task objective. We also present a simple yet effective method that works surprisingly well for LUSS. In addition, we benchmark related un/weakly/fully supervised methods accordingly, identifying the challenges and possible directions of LUSS. The benchmark and source code is publicly available at https://github.com/LUSSeg.

Topics & Concepts

Benchmark (surveying)Computer scienceSegmentationArtificial intelligenceMachine learningUnsupervised learningScale (ratio)Task (project management)Representation (politics)Code (set theory)Pattern recognition (psychology)EconomicsSet (abstract data type)ManagementProgramming languagePolitical scienceQuantum mechanicsLawPhysicsGeographyPoliticsGeodesyAdvanced Neural Network ApplicationsDomain Adaptation and Few-Shot LearningDigital Imaging for Blood Diseases
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