Fast Real-Time Pipeline for Robust Arm Gesture Recognition
Bagladi, Milán Zsolt, Gulyás, László, Szalay, Gergő
–arXiv.org Artificial Intelligence
This paper presents a real-time pipeline for dynamic arm gesture recognition based on OpenPose keypoint estimation, keypoint normalization, and a recurrent neural network classifier. The 1 x 1 normalization scheme and two feature representations (coordinate- and angle-based) are presented for the pipeline. In addition, an efficient method to improve robustness against camera angle variations is also introduced by using artificially rotated training data. Experiments on a custom traffic-control gesture dataset demonstrate high accuracy across varying viewing angles and speeds. Finally, an approach to calculate the speed of the arm signal (if necessary) is also presented.
arXiv.org Artificial Intelligence
Sep-30-2025