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arxiv: 2305.02187 · v2 · pith:IW4R5R5E · submitted 2023-05-03 · cs.CV

CLUSTSEG: Clustering for Universal Segmentation

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classification cs.CV
keywords clustsegclusterclusteringsegmentationcentersframeworktaskswithout
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We present CLUSTSEG, a general, transformer-based framework that tackles different image segmentation tasks (i.e., superpixel, semantic, instance, and panoptic) through a unified neural clustering scheme. Regarding queries as cluster centers, CLUSTSEG is innovative in two aspects:1) cluster centers are initialized in heterogeneous ways so as to pointedly address task-specific demands (e.g., instance- or category-level distinctiveness), yet without modifying the architecture; and 2) pixel-cluster assignment, formalized in a cross-attention fashion, is alternated with cluster center update, yet without learning additional parameters. These innovations closely link CLUSTSEG to EM clustering and make it a transparent and powerful framework that yields superior results across the above segmentation tasks.

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