Low Power EEG Data Encoding for Brain Neurostimulation Implants
Date
2022Language
en
Sujet
Résumé
Neurostimulation devices applied for the treatment of epilepsy that collect, encode, temporarily store, and transfer electroencephalographic (EEG) signals recorded intracranially from epileptic patients, suffer from short battery life spans. The principal goal of this study is to implement strategies for low power consumption rates during the device’s smooth and uninterrupted operation as well as during data transmission. Our approach is organised in three basic levels. The first level regards the initial modelling and creation of the template for the following two stages. The second level regards the development of code for programming integrated circuits and simulation. The third and final stage regards the transmitter’s implementation at the evaluation level. In particular, more than one software and device are involved in this phase, in order to achieve realistic performance. Our research aims to evolve such technologies so that they can transmit wireless data with simultaneous energy efficiency. © 2022 by the authors. Licensee MDPI, Basel, Switzerland.
Collections
Related items
Showing items related by title, author, creator and subject.
-
Low-Power Electroencephalographic Data Encoding System for Implantable Brain Stimulation Systems
Fragkou A.A., Kakarountas A.P., Kokkinos V. (2021)This paper studies the Delta encoding scheme and its effect on power dissipation, for wireless transmission from implantable devices. The study was performed on data from electroencephalographic signals. For the implementation ... -
A Multirate Fully Parallel LDPC Encoder for the IEEE 802.11n/ac/ax QC-LDPC Codes Based on Reduced Complexity XOR Trees
Mahdi A., Kanistras N., Paliouras V. (2021)This article proposes an encoding method based on a two-step encoding algorithm for the 12 quasi-cyclic (QC)-low-density parity-check (LDPC) (QC-LDPC) codes specified in the IEEE 802.11n/ac/ax standards. The proposed ... -
Review and comparative analysis of parallel video encoding techniques for VVC
Belememis P., Panagou N., Loukopoulos T., Koziri M. (2020)In this paper we review and summarize research results concerning video encoding parallelization, with a primary focus on medium and fine grained methods that operate at block or inner block levels. Taxonomies are illustrated ...