Training a Feedback Loop for Hand Pose Estimation
author: Markus Oberweger,
Institute for Computer Graphics and Vision, Graz University of Technology
published: Feb. 10, 2016, recorded: December 2015, views: 1754
published: Feb. 10, 2016, recorded: December 2015, views: 1754
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Description
We propose an entirely data-driven approach to estimating the 3D pose of a hand given a depth image. We show that we can correct the mistakes made by a Convolutional Neural Network trained to predict an estimate of the 3D pose by using a feedback loop. The components of this feedback loop are also Deep Networks, optimized using training data. They remove the need for fitting a 3D model to the input data, which requires both a carefully designed fitting function and algorithm. We show that our approach outperforms state-of-the-art methods, and is efficient as our implementation runs at over 400 fps on a single GPU.
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