none2noThe spatial distribution of sensing nodes plays a crucial role in signal sampling and reconstruction via wireless sensor networks. Although homogeneous Poisson point process (PPP) model is widely adopted for its analytical tractability, it cannot be considered a proper model for all experiencing nodes. The Ginibre point process (GPP) is a class of determinantal point processes that has been recently proposed for wireless networks with repulsiveness between nodes. A modified GPP can be considered an intermediate class between the PPP (fully random) and the GPP (relatively regular) that can be derived as limiting cases. In this paper we analyze sampling and reconstruction of finite-energy signals in ℝd when samples are gathered in spac...
Abstract—We consider sensor networks that measure spatio-temporal correlated processes. An important...
Compressed Sensing (CS) is a novel sampling paradigm that tries to take data-compression concepts do...
Compressive Sampling (CS) is a powerful sampling technique that allows accurately reconstructing a c...
The spatial distribution of sensing nodes plays a crucial role in signal sampling and reconstruction...
none3noThe deployment of sensing nodes is crucial for applications relying on the reconstruction of ...
Abstract—The deployment of sensing nodes is crucial for appli- cations relying on the reconstruction...
Spatiotemporal signal reconstruction from samples randomly gathered in a multidimensional space with...
Spatiotemporal signal reconstruction from samples randomly gathered in a multidimensional space with...
The estimation of spatial processes from sparse sensing nodes is fundamental for many applications, ...
Ambient radio frequency (RF) energy harvesting methods have drawn significant interests due to their...
In Wireless Sensor Networks (WSN), the effective detection and reconstruction of the event signal is...
Stochastic geometry is a highly studied fieldin telecommunications as in many other scientific field...
Keeler et al. recently derived approximation and convergence results, which imply that the point pro...
We consider the point process of signal strengths from transmitters in a wireless network observed f...
9 pages with 1.5 line spacingInternational audienceKeeler, Ross and Xia (2016) recently derived appr...
Abstract—We consider sensor networks that measure spatio-temporal correlated processes. An important...
Compressed Sensing (CS) is a novel sampling paradigm that tries to take data-compression concepts do...
Compressive Sampling (CS) is a powerful sampling technique that allows accurately reconstructing a c...
The spatial distribution of sensing nodes plays a crucial role in signal sampling and reconstruction...
none3noThe deployment of sensing nodes is crucial for applications relying on the reconstruction of ...
Abstract—The deployment of sensing nodes is crucial for appli- cations relying on the reconstruction...
Spatiotemporal signal reconstruction from samples randomly gathered in a multidimensional space with...
Spatiotemporal signal reconstruction from samples randomly gathered in a multidimensional space with...
The estimation of spatial processes from sparse sensing nodes is fundamental for many applications, ...
Ambient radio frequency (RF) energy harvesting methods have drawn significant interests due to their...
In Wireless Sensor Networks (WSN), the effective detection and reconstruction of the event signal is...
Stochastic geometry is a highly studied fieldin telecommunications as in many other scientific field...
Keeler et al. recently derived approximation and convergence results, which imply that the point pro...
We consider the point process of signal strengths from transmitters in a wireless network observed f...
9 pages with 1.5 line spacingInternational audienceKeeler, Ross and Xia (2016) recently derived appr...
Abstract—We consider sensor networks that measure spatio-temporal correlated processes. An important...
Compressed Sensing (CS) is a novel sampling paradigm that tries to take data-compression concepts do...
Compressive Sampling (CS) is a powerful sampling technique that allows accurately reconstructing a c...