Title
Action Recognition Using Kinematics Posture Feature On 3d Skeleton Joint Locations
Abstract
Action recognition is a very widely explored research area in computer vision and related fields. We propose Kinematics Posture Feature (KPF) extraction from 3D joint positions based on skeleton data for improving the performance of action recognition. In this approach, we consider the skeleton 3D joints as kinematics sensors. We propose Linear Joint Position Feature (LJPF) and Angular Joint Position Feature (AJPF) based on 3D linear joint positions and angles between bone segments. We then combine these two kinematics features for each video frame for each action to create the KPF feature sets. These feature sets encode the variation of motion in the temporal domain as if each body joint represents kinematics position and orientation sensors. In the next stage, we process the extracted KPF feature descriptor by using a low pass filter, and segment them by using sliding windows with optimized length. This concept resembles the approach of processing kinematics sensor data. From the segmented windows, we compute the Position-based Statistical Feature (PSF). These features consist of temporal domain statistical features (e.g., mean, standard deviation, variance, etc.). These statistical features encode the variation of postures (i.e., joint positions and angles) across the video frames. For performing classification, we explore Support Vector Machine (Linear), RNN, CNNRNN, and ConvRNN model. The proposed PSF feature sets demonstrate prominent performance in both statistical machine learning-and deep learning-based models. For evaluation, we explore five benchmark datasets namely UTKinect-Action3D, Kinect Activity Recognition Dataset (KARD), MSR 3D Action Pairs, Florence 3D, and Office Activity Dataset (OAD). To prevent overfitting, we consider the leave-one-subject-out framework as the experimental setup and perform 10-fold cross-validation. Our approach outperforms several existing methods in these benchmark datasets and achieves very promising classification performance.(c) 2021 Elsevier B.V. All rights reserved.
Year
DOI
Venue
2021
10.1016/j.patrec.2021.02.013
PATTERN RECOGNITION LETTERS
Keywords
DocType
Volume
Action recognition, Skeleton data, Kinematics posture feature (KPF), Position-based statistical feature (PSF), Joint angle, Joint position, Deep neural network, Ensemble architecture, Convrnn, Benchmark datasets, Linear joint position feature (LJPF), Angular joint position feature (AJPF)
Journal
145
ISSN
Citations 
PageRank 
0167-8655
0
0.34
References 
Authors
0
5
Name
Order
Citations
PageRank
Md. Atiqur Rahman Ahad115920.47
Masud Ahmed232.90
Anindya Das Antar332.90
Yasushi Makihara4101270.67
Yasushi Yagi51752186.22