Authors
Congqi Cao, Cuiling Lan, Yifan Zhang, Wenjun Zeng, Hanqing Lu, Yanning Zhang
Publication date
2018/11/9
Journal
IEEE Transactions on Circuits and Systems for Video Technology
Volume
29
Issue
11
Pages
3247-3257
Publisher
IEEE
Description
For skeleton-based action recognition, most of the existing works used recurrent neural networks. Using convolutional neural networks (CNNs) is another attractive solution considering their advantages in parallelization, effectiveness in feature learning, and model base sufficiency. Besides these, skeleton data are low-dimensional features. It is natural to arrange a sequence of skeleton features chronologically into an image, which retains the original information. Therefore, we solve the sequence learning problem as an image classification task using CNNs. For better learning ability, we build a classification network with stacked residual blocks and having a special design called linear skip gated connection which can benefit information propagation across multiple residual blocks. When arranging the coordinates of body joints in one frame into a skeleton feature, we systematically investigate the performance of …
Total citations
20192020202120222023202451927343123
Scholar articles
C Cao, C Lan, Y Zhang, W Zeng, H Lu, Y Zhang - IEEE Transactions on Circuits and Systems for Video …, 2018