Title :
Metric learning for graph based semi-supervised human pose estimation
Author :
Pourdamghani, N. ; Rabiee, Hamid R. ; Zolfaghari, M.
Abstract :
Discriminative approaches to human pose estimation have became popular in recent years. These approaches face a big challenge: Similar inputs might correspond to very dissimilar poses. This property misleads the mapping functions which rely on the Euclidean distances in the input space. In this paper, we use the distances between the labels of the training data to learn a metric and map the input data to a space where this problem is minimized. Our mapping is linear and hence preserves the manifold structure of the input data. We benefit from the unlabeled data to estimate this manifold in the new space as a nearest neighbor graph. We finally utilize Tikhonov regularization to find a smooth estimation of the labels over this manifold. Experimental results show the superiority of the proposed method both in the amount of required training data and the performance of labeling.
Keywords :
graph theory; learning (artificial intelligence); pose estimation; Euclidean distances; Tikhonov regularization; dissimilar poses; graph based semi-supervised human pose estimation; metric learning; nearest neighbor graph; similar inputs; smooth estimation; space manifold structure; training data; unlabeled data; Estimation; Humans; Labeling; Manifolds; Measurement; Pattern recognition; Training data;
Conference_Titel :
Pattern Recognition (ICPR), 2012 21st International Conference on
Conference_Location :
Tsukuba
Print_ISBN :
978-1-4673-2216-4