Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
8960108 | Information Sciences | 2019 | 29 Pages |
Abstract
Due to the complex spatio-temporal variations of data, time series recognition remains a challenging problem for the present deep networks. In this paper, we propose end-to-end hierarchical residual stochastic (HRS) networks to effectively and efficiently describe spatio-temporal variations. Specifically, we design stochastic kernelized filters based on a hierarchical framework with a new correlation residual (CorrRes) block to align the spatio-temporal features of a sequence. We further encode complex sequence patterns with a stochastic convolution residual (SConvRes) block, which employs the stochastic kernelized filters and a dropout strategy to reconfigure the convolution filters for large-scale computing in deep networks. Experiments on large-scale datasets, namely NTU RGB+D, SYSU-3D, UT-Kinect and Radar Behavior show that HRS networks significantly boost the performance of time series recognition and improve the state-of-the-art of skeleton, action, and radar behavior recognition performance.
Related Topics
Physical Sciences and Engineering
Computer Science
Artificial Intelligence
Authors
Chunyu Xie, Ce Li, Baochang Zhang, Lili Pan, Qixiang Ye, Wei Chen,