Viewpoint-aware object detection and pose estimation

Daniel Gläsner(Weizmann Institute of Science), Meirav Galun(Weizmann Institute of Science), Sharon Alpert(Weizmann Institute of Science), Ronen Basri(Weizmann Institute of Science), Gregory Shakhnarovich(Toyota Motor Corporation (United States))
Unknown
November 1, 2011
Cited by 97

Abstract

We describe an approach to category-level detection and viewpoint estimation for rigid 3D objects from single 2D images. In contrast to many existing methods, we directly integrate 3D reasoning with an appearance-based voting architecture. Our method relies on a nonparametric representation of a joint distribution of shape and appearance of the object class. Our voting method employs a novel parametrization of joint detection and viewpoint hypothesis space, allowing efficient accumulation of evidence. We combine this with a re-scoring and refinement mechanism, using an ensemble of view-specific Support Vector Machines. We evaluate the performance of our approach in detection and pose estimation of cars on a number of benchmark datasets.


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