Analog-and-Algorithm-Assisted Ultra-low Power Biosignal Acquisition Systems by Venkata Rajesh Pamula & Chris Van Hoof & Marian Verhelst
Author:Venkata Rajesh Pamula & Chris Van Hoof & Marian Verhelst
Language: eng
Format: epub
ISBN: 9783030058708
Publisher: Springer International Publishing
The idea of NUS based CS for physiological signals has also been explored. One of the earliest usage of NUS for PPG acquisition is reported in [85]. The authors in [85] argued that, given the fact that PPG signals are sparse on frequency basis and also the LED driver dominates the overall power consumption of PPG acquisition systems, using NUS based CS enables the reduction in power consumption of the LED driver, proportional to the CR. This idea was demonstrated on a commercially available medical kit from TI and achieves a claimed performance of 10 × compression without sacrificing accuracy in estimating SpO2 on reconstructed signal. More recently, Rajesh et al. [77] reported CS based PPG readout with embedded feature extraction for estimating HR and HRV directly from CS data. The presented ASIC achieves up to 30 × compression and therefore 30 × reduction in the LED driver power consumption, without significant loss of accuracy in estimating the average HR. The details of the feature extraction process and the ASIC implementation are presented in Chaps. 4 and 5, respectively.
Finally, a few hardware implementations for the CS reconstruction process are described in the literature. Maechler et al. [66, 67] reported hardware implementations for CS signal recovery for audio and long-term evolution (LTE) channel estimation, respectively. Ren and Marković [65] reported an ASIC implementation for CS reconstruction of biomedical signals. The ASIC, implemented in a 40-nm process, achieves a throughput of 12–237 kS/s for ExG signals, while consuming a power ranging from 8.6 to 78 mWs. Although Ren and Marković [65] advances the state-of-the-art by 76–350 × in terms of energy efficiency, the absolute power consumption is still higher for it to be integrated into the sensor nodes. Hence, alternative approaches, that circumvent signal reconstruction by extracting the features of interest directly from CS data at low-power consumption, are required. Some of those approaches, applied to EEG and PPG signal processing, are described in Chap. 4.
Download
This site does not store any files on its server. We only index and link to content provided by other sites. Please contact the content providers to delete copyright contents if any and email us, we'll remove relevant links or contents immediately.
Automotive | Engineering |
Transportation |
Whiskies Galore by Ian Buxton(41561)
Introduction to Aircraft Design (Cambridge Aerospace Series) by John P. Fielding(32906)
Small Unmanned Fixed-wing Aircraft Design by Andrew J. Keane Andras Sobester James P. Scanlan & András Sóbester & James P. Scanlan(32589)
Craft Beer for the Homebrewer by Michael Agnew(17953)
Turbulence by E. J. Noyes(7733)
The Complete Stick Figure Physics Tutorials by Allen Sarah(7162)
Kaplan MCAT General Chemistry Review by Kaplan(6629)
The Thirst by Nesbo Jo(6473)
Bad Blood by John Carreyrou(6295)
Modelling of Convective Heat and Mass Transfer in Rotating Flows by Igor V. Shevchuk(6244)
Learning SQL by Alan Beaulieu(6056)
Weapons of Math Destruction by Cathy O'Neil(5873)
Man-made Catastrophes and Risk Information Concealment by Dmitry Chernov & Didier Sornette(5687)
Digital Minimalism by Cal Newport;(5416)
Life 3.0: Being Human in the Age of Artificial Intelligence by Tegmark Max(5211)
iGen by Jean M. Twenge(5187)
Secrets of Antigravity Propulsion: Tesla, UFOs, and Classified Aerospace Technology by Ph.D. Paul A. Laviolette(5071)
Design of Trajectory Optimization Approach for Space Maneuver Vehicle Skip Entry Problems by Runqi Chai & Al Savvaris & Antonios Tsourdos & Senchun Chai(4859)
Electronic Devices & Circuits by Jacob Millman & Christos C. Halkias(4767)
