Surveillance sensors are a major source of unstructured Big Data. Discovering and recognizing spatiotemporal objects (e.g., events) in such data is of paramount importance to the security and safety of facilities and individuals. Hierarchical feature learning is at the crux to the problems of discovery and recognition. We present a multilayered convergent neural architecture for storing repeating spatially and temporally coincident patterns in data at multiple levels of abstraction. The bottom-up weights in each layer are learned to encode a hierarchy of over complete and sparse feature dictionaries from space- and time-varying sensory data by recursive layer-by-layer spherical clustering. This density-based clustering algorithm ignores out...
A critical problem faced in many scientific fields is the adequate separation of data derived from i...
International audienceHierarchical clustering is an important tool for extracting information from d...
International audienceWe propose a neuromimetic architecture able to perform pattern recognition. To...
The success of many tasks depends on good feature representation which is often domain-specific and ...
This dissertation is an investigation of unsupervised algorithms for the problem of feature learning...
Tscherepanow M. Incremental On-line Clustering with a Topology-Learning Hierarchical ART Neural Netw...
Temporally ordered multi-neuron patterns likely encode information in the brain. We introduce an uns...
A key challenge associated with the design of scalable deep learning architectures pertains to efcie...
We propose a novel end-to-end neural network architecture that, once trained, directly outputs a pro...
This work presents a computationally efficient real-time adaptive clustering algorithm that recogniz...
An integrated framework for density-based cluster analysis, outlier detection, and data visualizatio...
textabstractWe demonstrate that spiking neural networks encoding information in spike times are capa...
Hierarchical clustering using hybrid learning model of KFLANN and Multilayer Perceptron with Backpro...
When dealing with high-dimensional measurements that often show non-linear characteristics at multip...
In this paper, we propose a new clustering module that can be trained jointly with existing neural n...
A critical problem faced in many scientific fields is the adequate separation of data derived from i...
International audienceHierarchical clustering is an important tool for extracting information from d...
International audienceWe propose a neuromimetic architecture able to perform pattern recognition. To...
The success of many tasks depends on good feature representation which is often domain-specific and ...
This dissertation is an investigation of unsupervised algorithms for the problem of feature learning...
Tscherepanow M. Incremental On-line Clustering with a Topology-Learning Hierarchical ART Neural Netw...
Temporally ordered multi-neuron patterns likely encode information in the brain. We introduce an uns...
A key challenge associated with the design of scalable deep learning architectures pertains to efcie...
We propose a novel end-to-end neural network architecture that, once trained, directly outputs a pro...
This work presents a computationally efficient real-time adaptive clustering algorithm that recogniz...
An integrated framework for density-based cluster analysis, outlier detection, and data visualizatio...
textabstractWe demonstrate that spiking neural networks encoding information in spike times are capa...
Hierarchical clustering using hybrid learning model of KFLANN and Multilayer Perceptron with Backpro...
When dealing with high-dimensional measurements that often show non-linear characteristics at multip...
In this paper, we propose a new clustering module that can be trained jointly with existing neural n...
A critical problem faced in many scientific fields is the adequate separation of data derived from i...
International audienceHierarchical clustering is an important tool for extracting information from d...
International audienceWe propose a neuromimetic architecture able to perform pattern recognition. To...