International audienceThis paper addresses the information theoretical analysis of data compression achieved by random linear network coding in wireless sensor networks. A sparse network coding matrix is considered with columns having possibly different sparsity factors. For stationary and ergodic sources, necessary and sufficient conditions are provided on the number of required measurements to achieve asymptotically vanishing reconstruction error. To ensure the asymptotically optimal compression ratio, the sparsity factor can be arbitrary close to zero in absence of additive noise. In presence of noise, a sufficient condition on the sparsity of the coding matrix is also proposed
Reconstruction in compressed sensing relies on knowledge of a sparsifying transform. In a setting wh...
This paper proposes an approach toward solving an issue pertaining to measuring compressible data in...
Abstract—We propose a joint source-channel-network coding scheme, based on compressive sensing princ...
International audienceThis paper addresses the information theoretical analysis of data compression ...
We address the problem of data collection in a wireless sensor network. Network coding is used for d...
International audienceWe address the problem of data collection in a wireless sensor network. Networ...
Abstract-This work studies how to select optimal code parameters of Random Linear Network Coding (RL...
Data originating from devices and sensors in Inter- net of Things scenarios can often be modeled as ...
Despite the large body of theoretical research available on compression algorithms for wireless sens...
Abstract—Despite the large body of theoretical research available on compression algorithms for wire...
Abstract—In this paper, we study joint network coding and distributed source coding of inter-node de...
Compressive Sensing (CS) shows high promise for fully distributed compression in wireless sensor net...
Abstract – Network coding has been shown to improve throughput and reliability in a variety of theor...
Abstract — Compressive Sensing (CS) shows high promise for fully distributed compression in wireless...
In wireless sensor network existing spatial (inter) and temporal (intra) correlation causes redundan...
Reconstruction in compressed sensing relies on knowledge of a sparsifying transform. In a setting wh...
This paper proposes an approach toward solving an issue pertaining to measuring compressible data in...
Abstract—We propose a joint source-channel-network coding scheme, based on compressive sensing princ...
International audienceThis paper addresses the information theoretical analysis of data compression ...
We address the problem of data collection in a wireless sensor network. Network coding is used for d...
International audienceWe address the problem of data collection in a wireless sensor network. Networ...
Abstract-This work studies how to select optimal code parameters of Random Linear Network Coding (RL...
Data originating from devices and sensors in Inter- net of Things scenarios can often be modeled as ...
Despite the large body of theoretical research available on compression algorithms for wireless sens...
Abstract—Despite the large body of theoretical research available on compression algorithms for wire...
Abstract—In this paper, we study joint network coding and distributed source coding of inter-node de...
Compressive Sensing (CS) shows high promise for fully distributed compression in wireless sensor net...
Abstract – Network coding has been shown to improve throughput and reliability in a variety of theor...
Abstract — Compressive Sensing (CS) shows high promise for fully distributed compression in wireless...
In wireless sensor network existing spatial (inter) and temporal (intra) correlation causes redundan...
Reconstruction in compressed sensing relies on knowledge of a sparsifying transform. In a setting wh...
This paper proposes an approach toward solving an issue pertaining to measuring compressible data in...
Abstract—We propose a joint source-channel-network coding scheme, based on compressive sensing princ...