Slow Feature Analysis (SFA) is a subspace learning method inspired by the human visual system, however, it is seldom seen in computer vision. Motivated by its application for unsupervised activity analysis, we develop SFA’s first implementation of online temporal video segmentation to detect episodes of motion changes. We utilize a domainspecific indefinite kernel which takes the data representation into account to introduce robustness. As our kernel is indefinite (i.e. defines instead of a Hilbert, a Krein space), we formulate SFA in Krein space. We propose an incremental kernel SFA framework which utilizes the special properties of our kernel. Finally, we employ our framework to online temporal video segmentation and perform qualitative a...
We propose an exact framework for online learning with a family of indefinite (not positive) kernels...
• Slow feature analysis (SFA): an unsupervised learning technique for feature extraction from sequen...
Abstract--In this paper, an efficient and low complexity algorithm for non-sequential video content ...
Slow Feature Analysis (SFA) is a subspace learning method inspired by the human visual system, howev...
Slow feature analysis (SFA) is a dimensionality reduction technique which has been linked to how vis...
The Slow Feature Analysis (SFA) unsupervised learning framework extracts features representing the u...
This paper develops a kernelized slow feature analysis (SFA) algorithm. SFA is an unsupervised learn...
Temporal consistency is a strong cue in continuous data streams and especially in videos. We exploit...
Figure 1: In videos, each frame strongly correlates with its neighbors. Our approach exploits this f...
A recently introduced latent feature learning technique for time varying dynamic phenomena analysis ...
This work deals with the challenging task of activity recognition in unconstrained videos. Standard ...
Figure 1: In videos, each frame strongly correlates with its neighbors. Our approach exploits this f...
Slow Feature Analysis (SFA) extracts slowly varying features from a quickly varying input signal [1]...
In this thesis, I aim to advance the theories of online non-linear subspace learning through the dev...
Today, video surveillance systems produce thousands of terabytes of data. This source of information...
We propose an exact framework for online learning with a family of indefinite (not positive) kernels...
• Slow feature analysis (SFA): an unsupervised learning technique for feature extraction from sequen...
Abstract--In this paper, an efficient and low complexity algorithm for non-sequential video content ...
Slow Feature Analysis (SFA) is a subspace learning method inspired by the human visual system, howev...
Slow feature analysis (SFA) is a dimensionality reduction technique which has been linked to how vis...
The Slow Feature Analysis (SFA) unsupervised learning framework extracts features representing the u...
This paper develops a kernelized slow feature analysis (SFA) algorithm. SFA is an unsupervised learn...
Temporal consistency is a strong cue in continuous data streams and especially in videos. We exploit...
Figure 1: In videos, each frame strongly correlates with its neighbors. Our approach exploits this f...
A recently introduced latent feature learning technique for time varying dynamic phenomena analysis ...
This work deals with the challenging task of activity recognition in unconstrained videos. Standard ...
Figure 1: In videos, each frame strongly correlates with its neighbors. Our approach exploits this f...
Slow Feature Analysis (SFA) extracts slowly varying features from a quickly varying input signal [1]...
In this thesis, I aim to advance the theories of online non-linear subspace learning through the dev...
Today, video surveillance systems produce thousands of terabytes of data. This source of information...
We propose an exact framework for online learning with a family of indefinite (not positive) kernels...
• Slow feature analysis (SFA): an unsupervised learning technique for feature extraction from sequen...
Abstract--In this paper, an efficient and low complexity algorithm for non-sequential video content ...