Anticipating Many Futures: Online Human Motion Prediction and Generation for Human-Robot Interaction

Published: May 1, 2018
Abstract
Fluent and safe interactions of humans and robots require both partners to anticipate the others' actions. The bottleneck of most methods is the lack of an accurate model of natural human motion. In this work, we present a conditional variational autoencoder that is trained to predict a window of future human motion given a window of past frames. Using skeletal data obtained from RGB depth images, we show how this unsupervised approach can be...
Paper Details
Title
Anticipating Many Futures: Online Human Motion Prediction and Generation for Human-Robot Interaction
Published Date
May 1, 2018
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