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Distributed On-Sensor Compute System for AR/VR Devices: A Semi-Analytical Simulation Framework for Power Estimation

Authors :
Gomez, Jorge
Patel, Saavan
Sarwar, Syed Shakib
Li, Ziyun
Capoccia, Raffaele
Wang, Zhao
Pinkham, Reid
Berkovich, Andrew
Tsai, Tsung-Hsun
De Salvo, Barbara
Liu, Chiao
Publication Year :
2022

Abstract

Augmented Reality/Virtual Reality (AR/VR) glasses are widely foreseen as the next generation computing platform. AR/VR glasses are a complex "system of systems" which must satisfy stringent form factor, computing-, power- and thermal- requirements. In this paper, we will show that a novel distributed on-sensor compute architecture, coupled with new semiconductor technologies (such as dense 3D-IC interconnects and Spin-Transfer Torque Magneto Random Access Memory, STT-MRAM) and, most importantly, a full hardware-software co-optimization are the solutions to achieve attractive and socially acceptable AR/VR glasses. To this end, we developed a semi-analytical simulation framework to estimate the power consumption of novel AR/VR distributed on-sensor computing architectures. The model allows the optimization of the main technological features of the system modules, as well as the computer-vision algorithm partition strategy across the distributed compute architecture. We show that, in the case of the compute-intensive machine learning based Hand Tracking algorithm, the distributed on-sensor compute architecture can reduce the system power consumption compared to a centralized system, with the additional benefits in terms of latency and privacy.<br />Comment: 6 pages, 5 figures, TinyML Research Symposium

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2203.07474
Document Type :
Working Paper