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Forest Walk Methods for Localizing Body Joints from Single Depth Image

Authors
Jung, Ho YubLee, SoochahnHeo, Yong SeokYun, Il Dong
Issue Date
24-Sep-2015
Publisher
Public Library of Science
Keywords
Forest Walk; Pose Estimation; Depth Image; Joint Localization
Citation
PLoS ONE, v.10, no.9
Journal Title
PLoS ONE
Volume
10
Number
9
URI
https://scholarworks.bwise.kr/sch/handle/2021.sw.sch/10274
DOI
10.1371/journal.pone.0138328
ISSN
1932-6203
Abstract
We present multiple random forest methods for human pose estimation from single depth images that can operate in very high frame rate. We introduce four algorithms: random forest walk, greedy forest walk, random forest jumps, and greedy forest jumps. The proposed approaches can accurately infer the 3D positions of body joints without additional information such as temporal prior. A regression forest is trained to estimate the probability distribution to the direction or offset toward the particular joint, relative to the adjacent position. During pose estimation, the new position is chosen from a set of representative directions or offsets. The distribution for next position is found from traversing the regression tree from new position. The continual position sampling through 3D space will eventually produce an expectation of sample positions, which we estimate as the joint position. The experiments show that the accuracy is higher than current state-of-the-art pose estimation methods with additional advantage in computation time.
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