Convolutional neural random fields for action recognition

C Liu, J Liu, Z He, Y Zhai, Q Hu, Y Huang - Pattern recognition, 2016 - Elsevier
C Liu, J Liu, Z He, Y Zhai, Q Hu, Y Huang
Pattern recognition, 2016Elsevier
A deep discriminative structured model, convolutional neural random fields (CNRFs), is
proposed for action recognition problem. In the proposed model, a spatio-temporal
convolutional neural network (CNN) is developed for invariant feature learning from raw
input frames, and the CNN is combined with conditional random fields (CRFs) for capturing
the interdependencies between outputs. The parameters from both CRF and CNN are
learned in a joint fashion which enables structured prediction and feature learning as well …
Abstract
A deep discriminative structured model, convolutional neural random fields (CNRFs), is proposed for action recognition problem. In the proposed model, a spatio-temporal convolutional neural network (CNN) is developed for invariant feature learning from raw input frames, and the CNN is combined with conditional random fields (CRFs) for capturing the interdependencies between outputs. The parameters from both CRF and CNN are learned in a joint fashion which enables structured prediction and feature learning as well. We also explore different combinations of observation and transition feature functions based on the learned high level features from convolution part. The approach enjoys the advantages of both CNN and CRF, it has the invariant feature learning ability possessed by the former and structured prediction ability of the latter. The experimental results on both segmented and unsegmented human action recognition datasets show that CNRF boosts the performance over the comparison methods by a large margin.
Elsevier
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