Unsupervised Detection and Segmentation of Identical Objects

author: Minsu Cho, Computer Vision Lab, Seoul National University
published: July 19, 2010,   recorded: June 2010,   views: 7468
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Description

We address an unsupervised object detection and segmentation problem that goes beyond the conventional assumptions of one-to-one object correspondences or modeltest settings between images. Our method can detect and segment identical objects directly from a single image or a handful of images without any supervision. To detect and segment all the object-level correspondences from the given images, a novel multi-layer match-growing method is proposed that starts from initial local feature matches and explores the images by intra-layer expansion and inter-layer merge. It estimates geometric relations between object entities and establishes ‘object correspondence networks’ that connect matching objects. Experiments demonstrate robust performance of our method on challenging datasets.

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Download slides icon Download slides: cvpr2010_cho_udas_01.v1.pdf (10.4 MB)

Download article icon Download article: cvpr2010_cho_udas_01.pdf (17.7 MB)


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