ANALYSIS OF EMBEDDED GPU ARCHITECTURES FOR AI IN NEUROMUSCULAR APPLICATIONS
Journal: IADIS INTERNATIONAL JOURNAL ON COMPUTER SCIENCE AND INFORMATION SYSTEMS (Vol.19, No. 1)Publication Date: 2024-06-17
Authors : Simon Pfenning; Raul C. Sîmpetru; Niklas Pollak; Alessandro Del Vecchio; Dietmar Fey;
Page : 1-14
Keywords : ;
Abstract
The advancements in deep neural network design have led to a significant increase in the possibilities and functioning of AI-assisted medical hardware. To make use of this progress in the field of mobile applications or even as wearable devices, a suitable hardware-software ecosystem must be identified to meet the high computation and memory demands of neural networks with minimal energy consumption. In this paper, we analyze an up-to-date heterogenous embedded platform employing a deep convolutional network for hand position recognition through electromyography signals. Our evaluation aimed to determine the optimization efforts required for the architecture to function as a human wearable device and identify the most suitable accelerators on the given platform for this task.
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Last modified: 2024-11-27 00:40:18