Slow feature analysis (SFA) is motivated by biological model to extracts slowly varying feature from a quickly varying input signal. However, traditional slow feature analysis is an unsupervised method to extract slow or invariant feature and cannot be directly applied on the data set without an obvious temporal structure, i.e. face databases. In this paper, we propose a supervised slow feature analysis to do dimensionality reduction for face recognition. First, a new criterion is developed to construct a Pseudo-time series for data sets without an obvious temporal structure. Then, the first-order derivative at each point in the Pseudo-time series is computed in form of vectors. At last we construct the objective function of SSFA that ensur...
In undersampled problems where the number of samples is smaller than the dimension of data space, it...
A recently introduced latent feature learning technique for time-varying dynamic phenomena analysis ...
In order to accelerate data processing and improve classification accuracy, some classic dimension r...
Supervised learning from high-dimensional data, e.g., multimedia data, is a challenging task. We pro...
Supervised learning from high-dimensional data, e.g., multimedia data, is a challenging task. We pro...
We propose a Slow Feature Analysis (SFA) based classification of hand-poses and demonstrate that the...
the date of receipt and acceptance should be inserted later Abstract Slow Feature Analysis (SFA) is ...
A recently introduced latent feature learning technique for time varying dynamic phenomena analysis ...
Slow Feature Analysis (SFA) extracts slowly varying features from a quickly varying input signal [1]...
• Slow feature analysis (SFA): an unsupervised learning technique for feature extraction from sequen...
In undersampled problems where the number of samples is smaller than the di-mension of data space, i...
Objectives: To analyze the influence of the sparseness distribution characteristics of gradient-base...
Abstract—When the feature dimension is larger than the number of samples the small sample-size probl...
Slow feature analysis is an algorithm for unsupervised learning of invariant representations from da...
The problem of determining the optimal set of discriminant vectors for feature extraction in pattern...
In undersampled problems where the number of samples is smaller than the dimension of data space, it...
A recently introduced latent feature learning technique for time-varying dynamic phenomena analysis ...
In order to accelerate data processing and improve classification accuracy, some classic dimension r...
Supervised learning from high-dimensional data, e.g., multimedia data, is a challenging task. We pro...
Supervised learning from high-dimensional data, e.g., multimedia data, is a challenging task. We pro...
We propose a Slow Feature Analysis (SFA) based classification of hand-poses and demonstrate that the...
the date of receipt and acceptance should be inserted later Abstract Slow Feature Analysis (SFA) is ...
A recently introduced latent feature learning technique for time varying dynamic phenomena analysis ...
Slow Feature Analysis (SFA) extracts slowly varying features from a quickly varying input signal [1]...
• Slow feature analysis (SFA): an unsupervised learning technique for feature extraction from sequen...
In undersampled problems where the number of samples is smaller than the di-mension of data space, i...
Objectives: To analyze the influence of the sparseness distribution characteristics of gradient-base...
Abstract—When the feature dimension is larger than the number of samples the small sample-size probl...
Slow feature analysis is an algorithm for unsupervised learning of invariant representations from da...
The problem of determining the optimal set of discriminant vectors for feature extraction in pattern...
In undersampled problems where the number of samples is smaller than the dimension of data space, it...
A recently introduced latent feature learning technique for time-varying dynamic phenomena analysis ...
In order to accelerate data processing and improve classification accuracy, some classic dimension r...