Long Short-Term Memory Kalman Filters:Recurrent Neural Estimators for Pose Regularization

2017 IEEE International Conference on Computer Vision (ICCV)(2017)

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摘要
One-shot pose estimation for tasks such as body joint localization, camera pose estimation, and object tracking are generally noisy, and temporal filters have been extensively used for regularization. One of the most widely-used methods is the Kalman filter, which is both extremely simple and general. However, Kalman filters require a motion model and measurement model to be specified a priori, which burdens the modeler and simultaneously demands that we use explicit models that are often only crude approximations of reality. For example, in the pose-estimation tasks mentioned above, it is common to use motion models that assume constant velocity or constant acceleration, and we believe that these simplified representations are severely inhibitive. In this work, we propose to instead learn rich, dynamic representations of the motion and noise models. In particular, we propose learning these models from data using long short term memory, which allows representations that depend on all previous observations and all previous states. We evaluate our method using three of the most popular pose estimation tasks in computer vision, and in all cases we obtain state-of-the-art performance.
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关键词
long short-term memory Kalman filters,recurrent neural estimators,pose regularization,Kalman filter,motion model,constant velocity,dynamic representations,noise models,One-shot pose estimation
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