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Main Authors: Varposhti, Marzieh Hassanshahi, Shahsavari, Mahyar, van Gerven, Marcel
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2408.12978
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author Varposhti, Marzieh Hassanshahi
Shahsavari, Mahyar
van Gerven, Marcel
author_facet Varposhti, Marzieh Hassanshahi
Shahsavari, Mahyar
van Gerven, Marcel
contents Implementing AI algorithms on event-based embedded devices enables real-time processing of data, minimizes latency, and enhances power efficiency in edge computing. This research explores the deployment of a spiking recurrent neural network (SRNN) with liquid time constant neurons for gesture recognition. We focus on the energy efficiency and computational efficacy of NVIDIA Jetson Nano embedded GPU platforms. The embedded GPU showcases a 14-fold increase in power efficiency relative to a conventional GPU, making a compelling argument for its use in energy-constrained applications. The study's empirical findings also highlight that batch processing significantly boosts frame rates across various batch sizes while maintaining accuracy levels well above the baseline. These insights validate the SRNN with liquid time constant neurons as a robust model for interpreting temporal-spatial data in gesture recognition, striking a critical balance between processing speed and power frugality.
format Preprint
id arxiv_https___arxiv_org_abs_2408_12978
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Energy-Efficient Spiking Recurrent Neural Network for Gesture Recognition on Embedded GPUs
Varposhti, Marzieh Hassanshahi
Shahsavari, Mahyar
van Gerven, Marcel
Machine Learning
Implementing AI algorithms on event-based embedded devices enables real-time processing of data, minimizes latency, and enhances power efficiency in edge computing. This research explores the deployment of a spiking recurrent neural network (SRNN) with liquid time constant neurons for gesture recognition. We focus on the energy efficiency and computational efficacy of NVIDIA Jetson Nano embedded GPU platforms. The embedded GPU showcases a 14-fold increase in power efficiency relative to a conventional GPU, making a compelling argument for its use in energy-constrained applications. The study's empirical findings also highlight that batch processing significantly boosts frame rates across various batch sizes while maintaining accuracy levels well above the baseline. These insights validate the SRNN with liquid time constant neurons as a robust model for interpreting temporal-spatial data in gesture recognition, striking a critical balance between processing speed and power frugality.
title Energy-Efficient Spiking Recurrent Neural Network for Gesture Recognition on Embedded GPUs
topic Machine Learning
url https://arxiv.org/abs/2408.12978