Abstract

Action recognition is a hot topic in the field of computer vision. It has been widely used in human–computer/robot interaction, abnormal behavior monitoring, and medical assistive. Because of the excellent robustness of skeleton data, it has attracted many scholars to research skeleton-based action recognition. Most of the current skeleton-based action recognition methods suffer from the incomplete and poor generalization of the input features, inadequate feature extraction by the network model, and an imbalance between recognition accuracy and model size. We analyze the critical skeleton features for action recognition to solve these problems and propose a multifeatures and multistream network (MM-Net) for real-time action recognition. First, three pairs of features are proposed, which are the joint distance (JD) and JD velocity (JDV), joint angle (JA) and JA velocity (JAV), and fast-action joint position (FJP) and slow-action joint position (SJP). Second, an MM-Net is proposed by using a 1-D convolutional neural network (1DCNN) to reduce the number of parameters of the model and fully extract the three pairs of features. As a result, MM-Net achieves the highest accuracies on both JHMDB (86.5%) and SHREC (96.4% on coarse and 93.3% on fine datasets). In addition, MM-Net is applied to a human–robot interaction (HRI) platform, which proves the practicality of MM-Net.

Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call