2 research outputs found
Learning to Recognize 3D Human Action from A New Skeleton-based Representation Using Deep Convolutional Neural Networks
Recognizing human actions in untrimmed videos is an important challenging task. An effective 3D motion representation and a powerful learning model are two key factors influencing recognition performance. In this paper we introduce a new skeletonbased
representation for 3D action recognition in videos. The key idea of the proposed representation is to transform 3D joint coordinates of the human body carried in skeleton sequences into RGB images via a color encoding process. By normalizing the
3D joint coordinates and dividing each skeleton frame into five parts, where the joints are concatenated according to the order of their physical connections, the color-coded representation is able to represent spatio-temporal evolutions of complex 3D motions,
independently of the length of each sequence. We then design and train different Deep Convolutional Neural Networks (D-CNNs) based on the Residual Network architecture (ResNet) on the obtained image-based representations to learn 3D motion features
and classify them into classes. Our method is evaluated on two widely used action recognition benchmarks: MSR Action3D and NTU-RGB+D, a very large-scale dataset for 3D human action recognition. The experimental results demonstrate that the proposed
method outperforms previous state-of-the-art approaches whilst requiring less computation for training and prediction.This research was carried out at the Cerema Research Center
(CEREMA) and Toulouse Institute of Computer Science Research
(IRIT), Toulouse, France. Sergio A. Velastin is grateful for funding
received from the Universidad Carlos III de Madrid, the European
Union’s Seventh Framework Programme for Research, Technological
Development and demonstration under grant agreement
N. 600371, el Ministerio de Economia, Industria y Competitividad
(COFUND2013-51509) el Ministerio de Educación, cultura y
Deporte (CEI-15-17) and Banco Santander