Self-Organizing Neural Integration of Pose-Motion Features for Human Action Recognition
Frontiers in Neurorobotics,
Volume 9,
Number 3,
doi: 10.3389/fnbot.2015.00003
- Jun 2015
The visual recognition of complex, articulated human movements is fundamental for a
wide range of artificial systems oriented toward human-robot communication, action
classification, and action-driven perception. These challenging tasks may generally
involve the processing of a huge amount of visual information and learning-based
mechanisms for generalizing a set of training actions and classifying new samples. To
operate in natural environments, a crucial property is the efficient and robust recognition
of actions, also under noisy conditions caused by, for instance, systematic sensor errors
and temporarily occluded persons. Studies of the mammalian visual system and its
outperforming ability to process biological motion information suggest separate neural
pathways for the distinct processing of pose and motion features at multiple levels and
the subsequent integration of these visual cues for action perception. We present a
neurobiologically-motivated approach to achieve noise-tolerant action recognition in real
time. Our model consists of self-organizing Growing When Required (GWR) networks
that obtain progressively generalized representations of sensory inputs and learn inherent
spatio-temporal dependencies. During the training, the GWR networks dynamically
change their topological structure to better match the input space. We first extract
pose and motion features from video sequences and then cluster actions in terms
of prototypical pose-motion trajectories. Multi-cue trajectories from matching action
frames are subsequently combined to provide action dynamics in the joint feature space.
Reported experiments show that our approach outperforms previous results on a dataset
of full-body actions captured with a depth sensor, and ranks among the best results for
a public benchmark of domestic daily actions.
@Article{PWW15, author = {Parisi, German I. and Weber, Cornelius and Wermter, Stefan}, title = {Self-Organizing Neural Integration of Pose-Motion Features for Human Action Recognition}, journal = {Frontiers in Neurorobotics}, number = {3}, volume = {9}, pages = {}, year = {2015}, month = {Jun}, publisher = {Frontiers}, doi = {10.3389/fnbot.2015.00003}, }