© 2016 IEEE. Analog-to-information converters and Compressed Sampling (CS) sensor front-ends try to only extract the relevant, information-bearing elements of an incoming data stream. Information extraction and recognition tasks can run directly on the compressed data stream without needing full signal reconstruction. The accuracy of the extracted information or classification is strongly determined by the front-end settings and tolerated level of hardware impairments. Exploiting this, allows to dynamically tune accuracy for power consumption. This paper discusses this trade-off and introduces a theoretical framework to guide the selection of optimal hardware settings under given power or accuracy constraints. This is illustrated with two c...
Advances in signal processing are enabling promising solutions for ambulatory monitoring in healthca...
Abstract—Energy efficiency is one of the most concerns in tele-monitoring. As the rapid development ...
Compressive sensing (CS) is a signal acquisition strategy that, based on the assumption of sparsity,...
none6noWe report the design and implementation of an Analog-to-Information Converter (AIC) based on ...
Improvements in CMOS technology and sensor manufacturing have extended the purview of computing beyo...
New possibilit ies exist for the development of novel hardware/software platforms havin g fast data ...
Because sensing nodes typically have limited power resources, it is extremely important for signals ...
Abstract—This work introduces the use of compressed sensing (CS) algorithms for data compression in ...
The vision of the Internet of things (IoT) entails the connection of all possible objects to the Int...
Small, light and low power sensors have been utilized in a growing number of modern applications. Wi...
Affordable, wearable, embedded, wireless medical sensor systems thatenable continuous long term moni...
Thesis (Ph.D.)--University of Washington, 2012Body area networks (BAN), networks of wearable and wir...
Abstract—A signal-agnostic compressed sensing (CS) acquisition system is presented that addresses bo...
In recent years, compressed sensing (CS) has proved to be effective in lowering the power consumptio...
The long-standing analog-to-digital conversion paradigm based on Shannon/Nyquist sampling has been c...
Advances in signal processing are enabling promising solutions for ambulatory monitoring in healthca...
Abstract—Energy efficiency is one of the most concerns in tele-monitoring. As the rapid development ...
Compressive sensing (CS) is a signal acquisition strategy that, based on the assumption of sparsity,...
none6noWe report the design and implementation of an Analog-to-Information Converter (AIC) based on ...
Improvements in CMOS technology and sensor manufacturing have extended the purview of computing beyo...
New possibilit ies exist for the development of novel hardware/software platforms havin g fast data ...
Because sensing nodes typically have limited power resources, it is extremely important for signals ...
Abstract—This work introduces the use of compressed sensing (CS) algorithms for data compression in ...
The vision of the Internet of things (IoT) entails the connection of all possible objects to the Int...
Small, light and low power sensors have been utilized in a growing number of modern applications. Wi...
Affordable, wearable, embedded, wireless medical sensor systems thatenable continuous long term moni...
Thesis (Ph.D.)--University of Washington, 2012Body area networks (BAN), networks of wearable and wir...
Abstract—A signal-agnostic compressed sensing (CS) acquisition system is presented that addresses bo...
In recent years, compressed sensing (CS) has proved to be effective in lowering the power consumptio...
The long-standing analog-to-digital conversion paradigm based on Shannon/Nyquist sampling has been c...
Advances in signal processing are enabling promising solutions for ambulatory monitoring in healthca...
Abstract—Energy efficiency is one of the most concerns in tele-monitoring. As the rapid development ...
Compressive sensing (CS) is a signal acquisition strategy that, based on the assumption of sparsity,...