Human Action Recognition Using a Depth Sequence Key-frames Based on Discriminative Collaborative Representation Classifier for Healthcare Analytics
Computer Science and Information Systems, Tome 19 (2022) no. 3
Cet article a éte moissonné depuis la source Computer Science and Information Systems website
Using deep map sequence to recognize human action is an important research field in computer vision. The traditional deep map-based methods have a lot of redundant information. Therefore, this paper proposes a new deep map sequence feature expression method based on discriminative collaborative representation classifier, which highlights the time sequence of human action features. In this paper, the energy field is established according to the shape and action characteristics of human body to obtain the energy information of human body. Then the energy information is projected onto three orthogonal axes to obtain deep spatialtemporal energy map. Meanwhile, in order to solve the problem of high misclassification probability of similar samples by collaborative representation classifier (CRC), a discriminative CRC (DCRC) is proposed. The classifier takes into account the influence of all training samples and each kind of samples on the collaborative representation coefficient, it obtains the highly discriminative collaborative representation coefficient, and improves the discriminability of similar samples. Experimental results on MSR Action3D data set show that the redundancy of key-frame algorithm is reduced, and the operation efficiency of each algorithm is improved by 20%-30%. The proposed algorithm in this paper reduces the redundant information in deep map sequence and improves the extraction rate of feature map. It not only preserves the spatial information of human action through the energy field, but also records the temporal information of human action in a complete way. What’s more, it still maintains a high recognition accuracy in the action data with temporal information.
Keywords:
action recognition, deep map sequence, deep spatial-temporal energy map, discriminative CRC, energy information
@article{CSIS_2022_19_3_a21,
author = {Yuhang Wang and Tao Feng and Yi Zheng},
title = {Human {Action} {Recognition} {Using} a {Depth} {Sequence} {Key-frames} {Based} on {Discriminative} {Collaborative} {Representation} {Classifier} for {Healthcare} {Analytics}},
journal = {Computer Science and Information Systems},
year = {2022},
volume = {19},
number = {3},
url = {http://geodesic.mathdoc.fr/item/CSIS_2022_19_3_a21/}
}
TY - JOUR AU - Yuhang Wang AU - Tao Feng AU - Yi Zheng TI - Human Action Recognition Using a Depth Sequence Key-frames Based on Discriminative Collaborative Representation Classifier for Healthcare Analytics JO - Computer Science and Information Systems PY - 2022 VL - 19 IS - 3 UR - http://geodesic.mathdoc.fr/item/CSIS_2022_19_3_a21/ ID - CSIS_2022_19_3_a21 ER -
%0 Journal Article %A Yuhang Wang %A Tao Feng %A Yi Zheng %T Human Action Recognition Using a Depth Sequence Key-frames Based on Discriminative Collaborative Representation Classifier for Healthcare Analytics %J Computer Science and Information Systems %D 2022 %V 19 %N 3 %U http://geodesic.mathdoc.fr/item/CSIS_2022_19_3_a21/ %F CSIS_2022_19_3_a21
Yuhang Wang; Tao Feng; Yi Zheng. Human Action Recognition Using a Depth Sequence Key-frames Based on Discriminative Collaborative Representation Classifier for Healthcare Analytics. Computer Science and Information Systems, Tome 19 (2022) no. 3. http://geodesic.mathdoc.fr/item/CSIS_2022_19_3_a21/