Abstract—Over the past few years, wireless sensor networks received tremendous attention for monitoring physical phenomena, such as the temperature field in a given region. Applying conventional kernel regression methods for functional learning such as support vector machines is inappropriate for sensor networks, since the order of the resulting model and its computational complexity scales badly with the number of available sensors, which tends to be large. In order to circumvent this drawback, we propose in this paper a reduced-order model approach. To this end, we take advantage of recent developments in sparse representation literature, and show the natural link between reducing the model order and the topology of the deployed sensors. ...
The emergence of smart low-power devices (motes), which have micro-sensing, on-board processing, and...
Distributed signal processing algorithms have become a key approach for statistical inference in wir...
Wireless sensor networks (WSNs) consist of interconnected microsensors, each of which collects measu...
Wireless sensor networks rely on sensor devices deployed in an environment to support sensing and m...
International audienceWireless sensor networks rely on sensor devices deployed in an environment to ...
International audienceWireless sensor networks are designed to perform on inference the environment ...
In this paper, we propose a distributed learning strategy in wireless sensor networks. Taking advant...
We present distributed regression, an efficient and general framework for in-network modeling of sen...
invited paperInternational audienceWireless sensor networks are becoming versatile tools for learnin...
A distributed approach to monitoring the environmental field function with mobile sensor networks is...
In wireless sensor networks, centralized learning methods have very high communication costs and ene...
We propose a scheme for rate-constrained distributed nonparametric regression using a wireless senso...
This paper presents a distributed algorithm for mobile sensor networks to monitor the environment. W...
With an increased utilization of large sensor networks in applications such as environmental monitor...
Unlike conventional sensor networks, wireless sensors are limited in power, have much smaller memory...
The emergence of smart low-power devices (motes), which have micro-sensing, on-board processing, and...
Distributed signal processing algorithms have become a key approach for statistical inference in wir...
Wireless sensor networks (WSNs) consist of interconnected microsensors, each of which collects measu...
Wireless sensor networks rely on sensor devices deployed in an environment to support sensing and m...
International audienceWireless sensor networks rely on sensor devices deployed in an environment to ...
International audienceWireless sensor networks are designed to perform on inference the environment ...
In this paper, we propose a distributed learning strategy in wireless sensor networks. Taking advant...
We present distributed regression, an efficient and general framework for in-network modeling of sen...
invited paperInternational audienceWireless sensor networks are becoming versatile tools for learnin...
A distributed approach to monitoring the environmental field function with mobile sensor networks is...
In wireless sensor networks, centralized learning methods have very high communication costs and ene...
We propose a scheme for rate-constrained distributed nonparametric regression using a wireless senso...
This paper presents a distributed algorithm for mobile sensor networks to monitor the environment. W...
With an increased utilization of large sensor networks in applications such as environmental monitor...
Unlike conventional sensor networks, wireless sensors are limited in power, have much smaller memory...
The emergence of smart low-power devices (motes), which have micro-sensing, on-board processing, and...
Distributed signal processing algorithms have become a key approach for statistical inference in wir...
Wireless sensor networks (WSNs) consist of interconnected microsensors, each of which collects measu...