Back to Search Start Over

Low-Power Computer Vision: Status, Challenges, Opportunities

Authors :
Alyamkin, Sergei
Ardi, Matthew
Berg, Alexander C.
Brighton, Achille
Chen, Bo
Chen, Yiran
Cheng, Hsin-Pai
Fan, Zichen
Feng, Chen
Fu, Bo
Gauen, Kent
Goel, Abhinav
Goncharenko, Alexander
Guo, Xuyang
Ha, Soonhoi
Howard, Andrew
Hu, Xiao
Huang, Yuanjun
Kang, Donghyun
Kim, Jaeyoun
Ko, Jong Gook
Kondratyev, Alexander
Lee, Junhyeok
Lee, Seungjae
Lee, Suwoong
Li, Zichao
Liang, Zhiyu
Liu, Juzheng
Liu, Xin
Lu, Yang
Lu, Yung-Hsiang
Malik, Deeptanshu
Nguyen, Hong Hanh
Park, Eunbyung
Repin, Denis
Shen, Liang
Sheng, Tao
Sun, Fei
Svitov, David
Thiruvathukal, George K.
Zhang, Baiwu
Zhang, Jingchi
Zhang, Xiaopeng
Zhuo, Shaojie
Publication Year :
2019

Abstract

Computer vision has achieved impressive progress in recent years. Meanwhile, mobile phones have become the primary computing platforms for millions of people. In addition to mobile phones, many autonomous systems rely on visual data for making decisions and some of these systems have limited energy (such as unmanned aerial vehicles also called drones and mobile robots). These systems rely on batteries and energy efficiency is critical. This article serves two main purposes: (1) Examine the state-of-the-art for low-power solutions to detect objects in images. Since 2015, the IEEE Annual International Low-Power Image Recognition Challenge (LPIRC) has been held to identify the most energy-efficient computer vision solutions. This article summarizes 2018 winners' solutions. (2) Suggest directions for research as well as opportunities for low-power computer vision.<br />Comment: Preprint, Accepted by IEEE Journal on Emerging and Selected Topics in Circuits and Systems. arXiv admin note: substantial text overlap with arXiv:1810.01732

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1904.07714
Document Type :
Working Paper