AbstractThe abundance of data available on Wireless Sensor Networks makes online processing necessary. In industrial appli–cations for example, the correct operation of equipment can be the point of interest while raw sampled data is of minor importance. Classification algorithms can be used to make state classifications based on the available data. The distributed nature of Wireless Sensor Networks is a complication that needs to be considered when implement–ing classification algorithms. In this work, we investigate the bottlenecks that limit the options for distributed execution of three widely used algorithms: Feed Forward Neural Networks, naive Bayes classifiers and decision trees. By analyzing theoretical boundaries and using simulations ...
Abstract — Sensor networks are not just data networks with sensors being the sources of data. Rather...
Abstract—We study the detection performance of large scale sensor networks, configured as trees with...
AbstractIn distributed classification, each learner observes its environment and deduces a classifie...
The abundance of data available on Wireless Sensor Networks makes online processing necessary. In in...
AbstractThe abundance of data available on Wireless Sensor Networks makes online processing necessar...
Wireless Sensor Networks are tiny devices equipped with sensors and wireless communication. These de...
This article investigates the tradeoff between communication and memory usage in different methods o...
A wireless sensor network is envisaged that performs signal estimation by means of the distributed a...
Abstract—This paper presents a novel study on how to distribute neural networks in a wireless sensor...
This dissertation deals with developing optimization algorithms which can be distributed over a netw...
As more and more everyday electronic devices become equipped with the combined re- sources of comput...
Abstract—We study distributed strategies for classification of multiple targets in a wireless sensor...
Designing sensor networks with decentralized and autonomous decisions capabilities, i.e., without th...
The emergence of smart low-power devices (motes), which have micro-sensing, on-board processing, and...
Nearest neighbor classifiers that use all the training samples for classification require large memo...
Abstract — Sensor networks are not just data networks with sensors being the sources of data. Rather...
Abstract—We study the detection performance of large scale sensor networks, configured as trees with...
AbstractIn distributed classification, each learner observes its environment and deduces a classifie...
The abundance of data available on Wireless Sensor Networks makes online processing necessary. In in...
AbstractThe abundance of data available on Wireless Sensor Networks makes online processing necessar...
Wireless Sensor Networks are tiny devices equipped with sensors and wireless communication. These de...
This article investigates the tradeoff between communication and memory usage in different methods o...
A wireless sensor network is envisaged that performs signal estimation by means of the distributed a...
Abstract—This paper presents a novel study on how to distribute neural networks in a wireless sensor...
This dissertation deals with developing optimization algorithms which can be distributed over a netw...
As more and more everyday electronic devices become equipped with the combined re- sources of comput...
Abstract—We study distributed strategies for classification of multiple targets in a wireless sensor...
Designing sensor networks with decentralized and autonomous decisions capabilities, i.e., without th...
The emergence of smart low-power devices (motes), which have micro-sensing, on-board processing, and...
Nearest neighbor classifiers that use all the training samples for classification require large memo...
Abstract — Sensor networks are not just data networks with sensors being the sources of data. Rather...
Abstract—We study the detection performance of large scale sensor networks, configured as trees with...
AbstractIn distributed classification, each learner observes its environment and deduces a classifie...