A novel method for learning and recognizing sequential image data is proposed, and promising applications to vision-based human movement analysis are demonstrated. To find more compact representations of high-dimensional silhouette data, we exploit locality preserving projections (LPP) to achieve low-dimensional manifold embedding. Further, we present two kinds of methods to analyze and recognize learned motion manifolds. One is correlation matching based on the Hausdorrf distance, and the other is a probabilistic method using continuous hidden Markov models (HMM). Encouraging results are obtained in two representative experiments in the areas of human activity recognition and gait-based human identification.Liang Wang and David Sute
Abstract. We propose motion manifold learning and motion primitive segmentation framework for human ...
Shape and kinematics are two important cues in human movement analysis. Due to real difficulties in ...
[[abstract]]Visual analysis of human behavior has attracted a great deal of attention in the field o...
Copyright © 2008 Elsevier Inc. All rights reserved.Human motion analysis is increasingly attracting ...
In this paper, we learn explicit representations for dynamic shape manifolds of moving humans for th...
The problem of human activity recognition via visual stimuli can be approached using manifold learni...
[[abstract]]Gait recognition is a process of identifying individuals by the way they walk. Gait is o...
[[abstract]]With the increasing demands of visual surveillance systems, human identification at a di...
[[abstract]]Gait recognition is a process of identifying individuals by the way they walk. Gait is o...
[[abstract]]With the increasing demands of visual surveillance systems, human identification at a di...
The field of computer vision has recently witnessed remarkable progress, due mainly to visual data a...
We study the problem of analyzing and classifying human gait by modeling it as a stochastic process ...
Modeling the dynamic shape and appearance of articulated moving objects is essential for human motio...
Abstract—Manifold learning has been a popular method in many areas such as classification and recogn...
This paper presents a robust computational framework for monocular 3D tracking of human movement. Th...
Abstract. We propose motion manifold learning and motion primitive segmentation framework for human ...
Shape and kinematics are two important cues in human movement analysis. Due to real difficulties in ...
[[abstract]]Visual analysis of human behavior has attracted a great deal of attention in the field o...
Copyright © 2008 Elsevier Inc. All rights reserved.Human motion analysis is increasingly attracting ...
In this paper, we learn explicit representations for dynamic shape manifolds of moving humans for th...
The problem of human activity recognition via visual stimuli can be approached using manifold learni...
[[abstract]]Gait recognition is a process of identifying individuals by the way they walk. Gait is o...
[[abstract]]With the increasing demands of visual surveillance systems, human identification at a di...
[[abstract]]Gait recognition is a process of identifying individuals by the way they walk. Gait is o...
[[abstract]]With the increasing demands of visual surveillance systems, human identification at a di...
The field of computer vision has recently witnessed remarkable progress, due mainly to visual data a...
We study the problem of analyzing and classifying human gait by modeling it as a stochastic process ...
Modeling the dynamic shape and appearance of articulated moving objects is essential for human motio...
Abstract—Manifold learning has been a popular method in many areas such as classification and recogn...
This paper presents a robust computational framework for monocular 3D tracking of human movement. Th...
Abstract. We propose motion manifold learning and motion primitive segmentation framework for human ...
Shape and kinematics are two important cues in human movement analysis. Due to real difficulties in ...
[[abstract]]Visual analysis of human behavior has attracted a great deal of attention in the field o...