A recently introduced latent feature learning technique for time-varying dynamic phenomena analysis is the so-called slow feature analysis (SFA). SFA is a deterministic component analysis technique for multidimensional sequences that, by minimizing the variance of the first-order time derivative approximation of the latent variables, finds uncorrelated projections that extract slowly varying features ordered by their temporal consistency and constancy. In this paper, we propose a number of extensions in both the deterministic and the probabilistic SFA optimization frameworks. In particular, we derive a novel deterministic SFA algorithm that is able to identify linear projections that extract the common slowest varying features of two or mor...
In this paper, we aim to develop novel learning approaches for extracting invariant features from ti...
The analysis of high-dimensional, possibly temporally misaligned, and time-varying visual data is a ...
In dieser Doktorarbeit untersuchen wir zeitliche Langsamkeit als Prinzip für die Selbstorganisation...
Abstract — A recently introduced latent feature learning technique for time-varying dynamic phenomen...
A recently introduced latent feature learning technique for time varying dynamic phenomena analysis ...
Human facial behaviour analysis is an important task in developing automatic Human-Computer Interact...
The brain extracts useful features from a maelstrom of sensory information, and a fundamental goal o...
In this paper, we combine the principles of temporal slowness and nonnegative parts-based learning i...
the date of receipt and acceptance should be inserted later Abstract Slow Feature Analysis (SFA) is ...
Slow Feature Analysis (SFA) extracts slowly varying features from a quickly varying input signal [1]...
Slow feature analysis is an algorithm for unsupervised learning of invariant representations from da...
• Slow feature analysis (SFA): an unsupervised learning technique for feature extraction from sequen...
Slow Feature Analysis (SFA) is an efficient algorithm for learning input-output functions that extr...
Slow feature analysis (SFA) is motivated by biological model to extracts slowly varying feature from...
The paper presents an agent-based framework for in-vestigating a class of learning algorithms that e...
In this paper, we aim to develop novel learning approaches for extracting invariant features from ti...
The analysis of high-dimensional, possibly temporally misaligned, and time-varying visual data is a ...
In dieser Doktorarbeit untersuchen wir zeitliche Langsamkeit als Prinzip für die Selbstorganisation...
Abstract — A recently introduced latent feature learning technique for time-varying dynamic phenomen...
A recently introduced latent feature learning technique for time varying dynamic phenomena analysis ...
Human facial behaviour analysis is an important task in developing automatic Human-Computer Interact...
The brain extracts useful features from a maelstrom of sensory information, and a fundamental goal o...
In this paper, we combine the principles of temporal slowness and nonnegative parts-based learning i...
the date of receipt and acceptance should be inserted later Abstract Slow Feature Analysis (SFA) is ...
Slow Feature Analysis (SFA) extracts slowly varying features from a quickly varying input signal [1]...
Slow feature analysis is an algorithm for unsupervised learning of invariant representations from da...
• Slow feature analysis (SFA): an unsupervised learning technique for feature extraction from sequen...
Slow Feature Analysis (SFA) is an efficient algorithm for learning input-output functions that extr...
Slow feature analysis (SFA) is motivated by biological model to extracts slowly varying feature from...
The paper presents an agent-based framework for in-vestigating a class of learning algorithms that e...
In this paper, we aim to develop novel learning approaches for extracting invariant features from ti...
The analysis of high-dimensional, possibly temporally misaligned, and time-varying visual data is a ...
In dieser Doktorarbeit untersuchen wir zeitliche Langsamkeit als Prinzip für die Selbstorganisation...