Contribution
- We are the first attempt to provide a complete study of 3D video dataset (more than 40 public datasets) for 3D human action perception, so researchers can focus on their particular algorithms and implementations without recording new video data or paying for them.
- We investigate the state-of-the-art approaches in this field to facilitate the comparison of different methods and give insight into the abilities of the different methods. Based on the reviews of more than 200 technical papers, we address the limitations of the state-of-the-art and point out the challenges and promising directions of future research.
- We provide an interactive website for researchers in 3D human action domain. Within this website, researchers could get any information about the machine recognition of 3D human action (e.g., who is the best accuracy at dataset X, which paper provides the experimental result of dataset X, how many datasets provides the skeleton information?...).
Abstract
Machine
recognition of human actions constitutes an active research field due
to its various applications in the field of robotics, automotive
industry, video surveillance and human-machine interaction. The majority
of work conducted in this area involves the use of 2D videos, despite
the inherent problems due to pose and illumination variations. The
recent development of depth sensors has created new opportunities to
deal with these problems and advance this field. In this paper we survey
the recent advances in 3D human action recognition. We present
currently available 3D action datasets suitable for 3D action analysis,
and discuss the novelties of recent research in 3D video representations
and action classification process. Moreover, we address the limitations
of the state-of-the-art and point out the challenges and promising
directions of future research.
We consider the task of recognizing human motions with action classes in 3D data (depth video data). The interest in the topic is motivated by the increasing popularity of novel 3D sensing devices. The low-cost 3D sensors mark the arrival of a step change for computer systems capability. It can be regarded as a big step to the ultimate goal of human computing - a shift in computing from the desktop computers to a multiplicity of smart computing devices diffused into our environment.