2012
DOI: 10.48550/arxiv.1210.3288
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Unsupervised Detection and Tracking of Arbitrary Objects with Dependent Dirichlet Process Mixtures

Abstract: This paper proposes a technique for the unsupervised detection and tracking of arbitrary objects in videos. It is intended to reduce the need for detection and localization methods tailored to specific object types and serve as a general framework applicable to videos with varied objects, backgrounds, and image qualities. The technique uses a dependent Dirichlet process mixture (DDPM) known as the Generalized Polya Urn (GPUDDPM) to model image pixel data that can be easily and efficiently extracted from the re… Show more

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