Title :
Latent Regression Forest: Structured Estimation of 3D Articulated Hand Posture
Author :
Danhang Tang ; Hyung Jin Chang ; Tejani, Alykhan ; Tae-Kyun Kim
Author_Institution :
Imperial Coll. London, London, UK
Abstract :
In this paper we present the Latent Regression Forest (LRF), a novel framework for real-time, 3D hand pose estimation from a single depth image. In contrast to prior forest-based methods, which take dense pixels as input, classify them independently and then estimate joint positions afterwards, our method can be considered as a structured coarse-to-fine search, starting from the centre of mass of a point cloud until locating all the skeletal joints. The searching process is guided by a learnt Latent Tree Model which reflects the hierarchical topology of the hand. Our main contributions can be summarised as follows: (i) Learning the topology of the hand in an unsupervised, data-driven manner. (ii) A new forest-based, discriminative framework for structured search in images, as well as an error regression step to avoid error accumulation. (iii) A new multi-view hand pose dataset containing 180K annotated images from 10 different subjects. Our experiments show that the LRF out-performs state-of-the-art methods in both accuracy and efficiency.
Keywords :
pose estimation; regression analysis; trees (mathematics); unsupervised learning; Latent regression forest; centre of mass; forest-based discriminative framework; hierarchical topology; learnt Latent tree model; point cloud; real-time 3D hand pose estimation; searching process; single depth image; skeletal joints; structured coarse-to-fine search; structured search; unsupervised data-driven manner; Estimation; Joints; Regression tree analysis; Three-dimensional displays; Topology; Training; Vegetation; 3D hand posture; latent regression forest; latent tree model; regression forest;
Conference_Titel :
Computer Vision and Pattern Recognition (CVPR), 2014 IEEE Conference on
Conference_Location :
Columbus, OH
DOI :
10.1109/CVPR.2014.490