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ICRA
2009
IEEE

Learning 3-D object orientation from images

14 years 7 months ago
Learning 3-D object orientation from images
— We propose a learning algorithm for estimating the 3-D orientation of objects. Orientation learning is a difficult problem because the space of orientations is non-Euclidean, and in some cases (such as quaternions) the representation is ambiguous, in that multiple representations exist for the same physical orientation. Learning is further complicated by the fact that most man-made objects exhibit symmetry, so that there are multiple “correct” orientations. In this paper, we propose a new representation for orientations—and a class of learning and inference algorithms using this representation— that allows us to learn orientations for symmetric or asymmetric objects as a function of a single image. We extensively evaluate our algorithm for learning orientations of objects from six categories.1
Ashutosh Saxena, Justin Driemeyer, Andrew Y. Ng
Added 23 May 2010
Updated 23 May 2010
Type Conference
Year 2009
Where ICRA
Authors Ashutosh Saxena, Justin Driemeyer, Andrew Y. Ng
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