Title :
Realtime and Robust Hand Tracking from Depth
Author :
Chen Qian ; Xiao Sun ; Yichen Wei ; Xiaoou Tang ; Jian Sun
Abstract :
We present a realtime hand tracking system using a depth sensor. It tracks a fully articulated hand under large viewpoints in realtime (25 FPS on a desktop without using a GPU) and with high accuracy (error below 10 mm). To our knowledge, it is the first system that achieves such robustness, accuracy, and speed simultaneously, as verified on challenging real data. Our system is made of several novel techniques. We model a hand simply using a number of spheres and define a fast cost function. Those are critical for realtime performance. We propose a hybrid method that combines gradient based and stochastic optimization methods to achieve fast convergence and good accuracy. We present new finger detection and hand initialization methods that greatly enhance the robustness of tracking.
Keywords :
convergence; fingerprint identification; gradient methods; object tracking; real-time systems; stochastic programming; convergence; cost function; depth sensor; finger detection; gradient based optimization method; hand initialization method; realtime hand tracking; realtime performance; robust hand tracking; robustness; stochastic optimization method; Accuracy; Cost function; Iterative closest point algorithm; Three-dimensional displays; Thumb; Tracking; ICP; PSO; hand tracking;
Conference_Titel :
Computer Vision and Pattern Recognition (CVPR), 2014 IEEE Conference on
Conference_Location :
Columbus, OH
DOI :
10.1109/CVPR.2014.145