Principal component analysis was applied to human gait patterns to investigate the role and relative importance of temporal versus spatial features. Datasets consisted of various limb and body angles sampled over increasingly long time intervals. We find that spatial and temporal cues may be useful for different aspects of recognition. Temporal cues contain information that can distinguish the phase of the gait cycle; spatial cues are useful for distinguishing running from walking. PCA and related techniques may be useful for identifying features used by the visual system for recognizing biological motion
Many studies have now shown that it is possible to recognize people by the way they walk. As yet the...
The walking pattern of a human is fairly unique for each individual. The pattern of locomotion is kn...
In this paper, Principal Component Analysis (PCA) with and without Radon Transform (RT) are applied ...
Principal component analysis was applied to human gait patterns to investigate the role and ...
We describe a methodology for classification of gait (walk, run, jog, etc.) and recognition of indiv...
In this thesis, it is proposed that the visual perception of biological motion, both in natural imag...
Work in this thesis is about analysing two types of kinematics data representation: spatial represen...
This paper represents a method for Human Recognition system using Principal Component Analysis. Hum...
Abstract — Human gait recognition is a developing biometric engineering now a days. It perceives the...
The purpose of this study was to identify meaningful gait patterns in knee frontal plane kinematics ...
Gait classification is a developing research area, particularly with regards to biometrics. It aims ...
Gait analysis is a process of learning the motion of human and animal by wearable sensor approach or...
Although gait recognition has drawn increasing research attention recently, it remains challenging t...
This paper proposes a new gait representation that encodes the dynamics of a gait period through a 2...
This study aimed at understanding whether principal component analysis (PCA) may be useful to charac...
Many studies have now shown that it is possible to recognize people by the way they walk. As yet the...
The walking pattern of a human is fairly unique for each individual. The pattern of locomotion is kn...
In this paper, Principal Component Analysis (PCA) with and without Radon Transform (RT) are applied ...
Principal component analysis was applied to human gait patterns to investigate the role and ...
We describe a methodology for classification of gait (walk, run, jog, etc.) and recognition of indiv...
In this thesis, it is proposed that the visual perception of biological motion, both in natural imag...
Work in this thesis is about analysing two types of kinematics data representation: spatial represen...
This paper represents a method for Human Recognition system using Principal Component Analysis. Hum...
Abstract — Human gait recognition is a developing biometric engineering now a days. It perceives the...
The purpose of this study was to identify meaningful gait patterns in knee frontal plane kinematics ...
Gait classification is a developing research area, particularly with regards to biometrics. It aims ...
Gait analysis is a process of learning the motion of human and animal by wearable sensor approach or...
Although gait recognition has drawn increasing research attention recently, it remains challenging t...
This paper proposes a new gait representation that encodes the dynamics of a gait period through a 2...
This study aimed at understanding whether principal component analysis (PCA) may be useful to charac...
Many studies have now shown that it is possible to recognize people by the way they walk. As yet the...
The walking pattern of a human is fairly unique for each individual. The pattern of locomotion is kn...
In this paper, Principal Component Analysis (PCA) with and without Radon Transform (RT) are applied ...