首页 /研究 /Robust Hand Gesture Tracking and Recognition for Healthcare via Recurrent Neural Network
PERCEPTION

Robust Hand Gesture Tracking and Recognition for Healthcare via Recurrent Neural Network

Hira Ansar, Ahmad Jalal

发表年份
2023
引用次数
38

摘要

In the emerging fields of computer vision, robotics, and medicine, It's difficult to recognize gestures in dynamic environment. For human-computer hand gesture tracking and recognition, symmetry is required. Recent research has presented many RGB gesture recognition methods as a result of sensor technology advancements. In this research, we propose a sustainable hand gesture tracking and recognition system that can identify and recognize RGB dynamic motions in challenging environments while maintaining accuracy. Firstly, the frames are extracted from dynamic gestures. The frames are preprocessed to reduce noise and adjust light intensity. After that, the hand is detected using the Single-shot Multi-box Detector (SSD). From the extracted hand landmarks are attained via a colour-based fast marching algorithm. The features are extracted, such as polygon mesh, neural gas, and geometric shapes. On the features, the Active Bee Colony Optimizer (ABCO) is applied to reduce dimensionality. Then Recurrent Neural Network (RNN) is applied to classify the gestures. The proposed system is tested on Sign word and Egogesture datasets, providing accuracy of 93.33% and 92.67%, respectively.

关键词

Computer scienceGestureRecurrent neural networkGesture recognitionArtificial neural networkHealth careArtificial intelligenceTracking (education)Computer visionSpeech recognition

相关论文

查看 PERCEPTION 分类全部论文