Squeezing Deep Learning into Mobile and Embedded Devices

被引:126
|
作者
Lane, Nicholas D. [1 ,2 ]
Bhattacharya, Sourav [2 ]
Mathur, Akhil [2 ]
Georgiev, Petko [3 ]
Forlivesi, Claudio [2 ]
Kawsar, Fahim [2 ]
机构
[1] UCL, London, England
[2] Nokia Bell Labs, Holmdel, NJ USA
[3] Google DeepMind, London, England
关键词
deep learning; deep neural networks; embedded systems; mobile; pervasive computing; smart watches; smartphones;
D O I
10.1109/MPRV.2017.2940968
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
This department provides an overview the progress the authors have made to the emerging area of embedded and mobile forms of on-device deep learning. Their work addresses two core technical questions. First, how should deep learning principles and algorithms be applied to sensor inference problems that are central to this class of computing? Second, what is required for current and future deep learning innovations to be efficiently integrated into a variety of mobile resource-constrained systems? Toward answering such questions, the authors describe phone, watch, and embedded prototypes that can locally run large-scale deep networks processing audio, images, and inertial sensor data. These prototypes are enabled with a variety of algorithmic and system-level innovations that vastly reduce conventional inference-time overhead of deep models. © 2002-2012 IEEE.
引用
收藏
页码:82 / 88
页数:7
相关论文
共 50 条
  • [21] Cooperation of Mobile Devices for Fast Inference of Deep Learning Applications
    Qinglin Yang
    Xiaofei Luo
    Peng Li
    Toshiaki Miyazaki
    Wenfeng Shen
    Weiqin Tong
    Mobile Networks and Applications, 2021, 26 : 1243 - 1249
  • [22] Cooperation of Mobile Devices for Fast Inference of Deep Learning Applications
    Yang, Qinglin
    Luo, Xiaofei
    Li, Peng
    Miyazaki, Toshiaki
    Shen, Wenfeng
    Tong, Weiqin
    MOBILE NETWORKS & APPLICATIONS, 2021, 26 (03): : 1243 - 1249
  • [23] Enable Deep Learning on Mobile Devices: Methods, Systems, and Applications
    Cai, Han
    Lin, Ji
    Lin, Yujun
    Liu, Zhijian
    Tang, Haotian
    Wang, Hanrui
    Zhu, Ligeng
    Han, Song
    ACM TRANSACTIONS ON DESIGN AUTOMATION OF ELECTRONIC SYSTEMS, 2022, 27 (03)
  • [24] Towards Multimodal Deep Learning for Activity Recognition on Mobile Devices
    Radu, Valentin
    Lane, Nicholas D.
    Bhattacharya, Sourav
    Mascolo, Cecilia
    Marina, Mahesh K.
    Kawsar, Fahim
    UBICOMP'16 ADJUNCT: PROCEEDINGS OF THE 2016 ACM INTERNATIONAL JOINT CONFERENCE ON PERVASIVE AND UBIQUITOUS COMPUTING, 2016, : 185 - 188
  • [25] Deployment of Deep Learning Models to Mobile Devices for Spam Classification
    Zainab, Ameema
    Syed, Dabeeruddin
    Al-Thani, Dena
    2019 IEEE FIRST INTERNATIONAL CONFERENCE ON COGNITIVE MACHINE INTELLIGENCE (COGMI 2019), 2019, : 112 - 117
  • [26] Marine Objects Detection Using Deep Learning on Embedded Edge Devices
    Heller, D.
    Rizk, M.
    Douguet, R.
    Baghdadi, A.
    Diguet, J-Ph.
    2022 IEEE INTERNATIONAL WORKSHOP ON RAPID SYSTEM PROTOTYPING, RSP, 2022, : 1 - 7
  • [27] Fast and Accurate Deep Learning Model for Stamps Detection for Embedded Devices
    A. Gayer
    D. Ershova
    V. Arlazarov
    Pattern Recognition and Image Analysis, 2022, 32 : 772 - 779
  • [28] Fast and Accurate Deep Learning Model for Stamps Detection for Embedded Devices
    Gayer, A.
    Ershova, D.
    Arlazarov, V.
    PATTERN RECOGNITION AND IMAGE ANALYSIS, 2022, 32 (04) : 772 - 779
  • [29] Deep learning based image classification for embedded devices: A systematic review
    Moreira, Larissa Ferreira Rodrigues
    Moreira, Rodrigo
    Travencolo, Bruno Augusto Nassif
    Backes, Andre Ricardo
    NEUROCOMPUTING, 2025, 623
  • [30] Environmental sound recognition on embedded devices using deep learning: a review
    Gairi, Pau
    Palleja, Tomas
    Tresanchez, Marcel
    ARTIFICIAL INTELLIGENCE REVIEW, 2025, 58 (06)