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Main Authors: Katare, Dewant, Perino, Diego, Nurmi, Jari, Warnier, Martijn, Janssen, Marijn, Ding, Aaron Yi
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2304.14271
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author Katare, Dewant
Perino, Diego
Nurmi, Jari
Warnier, Martijn
Janssen, Marijn
Ding, Aaron Yi
author_facet Katare, Dewant
Perino, Diego
Nurmi, Jari
Warnier, Martijn
Janssen, Marijn
Ding, Aaron Yi
contents Autonomous driving services rely heavily on sensors such as cameras, LiDAR, radar, and communication modules. A common practice of processing the sensed data is using a high-performance computing unit placed inside the vehicle, which deploys AI models and algorithms to act as the brain or administrator of the vehicle. The vehicular data generated from average hours of driving can be up to 20 Terabytes depending on the data rate and specification of the sensors. Given the scale and fast growth of services for autonomous driving, it is essential to improve the overall energy and environmental efficiency, especially in the trend towards vehicular electrification (e.g., battery-powered). Although the areas have seen significant advancements in sensor technologies, wireless communications, computing and AI/ML algorithms, the challenge still exists in how to apply and integrate those technology innovations to achieve energy efficiency. This survey reviews and compares the connected vehicular applications, vehicular communications, approximation and Edge AI techniques. The focus is on energy efficiency by covering newly proposed approximation and enabling frameworks. To the best of our knowledge, this survey is the first to review the latest approximate Edge AI frameworks and publicly available datasets in energy-efficient autonomous driving. The insights and vision from this survey can be beneficial for the collaborative driving service development on low-power and memory-constrained systems and also for the energy optimization of autonomous vehicles.
format Preprint
id arxiv_https___arxiv_org_abs_2304_14271
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle A Survey on Approximate Edge AI for Energy Efficient Autonomous Driving Services
Katare, Dewant
Perino, Diego
Nurmi, Jari
Warnier, Martijn
Janssen, Marijn
Ding, Aaron Yi
Robotics
Artificial Intelligence
Machine Learning
Autonomous driving services rely heavily on sensors such as cameras, LiDAR, radar, and communication modules. A common practice of processing the sensed data is using a high-performance computing unit placed inside the vehicle, which deploys AI models and algorithms to act as the brain or administrator of the vehicle. The vehicular data generated from average hours of driving can be up to 20 Terabytes depending on the data rate and specification of the sensors. Given the scale and fast growth of services for autonomous driving, it is essential to improve the overall energy and environmental efficiency, especially in the trend towards vehicular electrification (e.g., battery-powered). Although the areas have seen significant advancements in sensor technologies, wireless communications, computing and AI/ML algorithms, the challenge still exists in how to apply and integrate those technology innovations to achieve energy efficiency. This survey reviews and compares the connected vehicular applications, vehicular communications, approximation and Edge AI techniques. The focus is on energy efficiency by covering newly proposed approximation and enabling frameworks. To the best of our knowledge, this survey is the first to review the latest approximate Edge AI frameworks and publicly available datasets in energy-efficient autonomous driving. The insights and vision from this survey can be beneficial for the collaborative driving service development on low-power and memory-constrained systems and also for the energy optimization of autonomous vehicles.
title A Survey on Approximate Edge AI for Energy Efficient Autonomous Driving Services
topic Robotics
Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2304.14271