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

机译:长短期记忆卡尔曼过滤器:用于构成正规化的经常性神经估算

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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.
机译:对于身体联合定位,相机姿势估计和对象跟踪等任务的一次拍摄姿势估计通常是嘈杂的,并且时间过滤器已经广泛用于正规化。最广泛使用的方法之一是卡尔曼滤波器,这既非常简单又一般。然而,卡尔曼滤波器需要一个运动模型和测量模型来指定先验,这使得建模者负担并同时要求我们使用的明确模型,这些模型通常只有原始近似现实的近似。例如,在上述姿势估计任务中,通常使用假设恒定速度或恒定加速的运动模型,并且我们认为这些简化的表示严重抑制。在这项工作中,我们建议改为学习的运动和噪声模型的丰富,动态表示。特别是,我们建议使用长短短期内存来从数据中学习这些模型,这允许依赖于所有先前的观察和所有先前状态的表示。我们使用计算机愿景中的三个最流行的姿势估算任务评估我们的方法,并且在所有情况下我们都获得最先进的性能。

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