Implicitly Constrained Gaussian Process Regression for Monocular Non-Rigid Pose Estimation
Salzmann, Mathieu, Urtasun, Raquel
–Neural Information Processing Systems
Estimating 3D pose from monocular images is a highly ambiguous problem. Physical constraints can be exploited to restrict the space of feasible configurations. In this paper we propose an approach to constraining the prediction of a discriminative predictor. We first show that the mean prediction of a Gaussian process implicitly satisfies linear constraints if those constraints are satisfied by the training examples. We then show how, by performing a change of variables, a GP can be forced to satisfy quadratic constraints.
constraint, implicitly constrained gaussian process regression, monocular non-rigid pose estimation, (1 more...)
Neural Information Processing Systems
Feb-15-2020, 03:13:36 GMT
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