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2017 Fiscal Year Annual Research Report

Embedded Compression for Embedded Intelligent Vision & Video System

Research Project

Project/Area Number 17J10477
Research InstitutionWaseda University

Principal Investigator

郭 栗  早稲田大学, 理工学術院(情報生産システム研究科), 特別研究員(DC2)

Project Period (FY) 2017-04-26 – 2019-03-31
Keywordsvideo coding / computer vision / embedded compression / power consumption
Outline of Annual Research Achievements

My research topic is "embedded compression for embedded intelligent vision & video system". Nowadays, video coding and computer vision algorithms are widely applied in mobile devices, such as smartphones and wireless sensor networks. While many of these devices are battery powered or even battery-less, a low energy consumption is crucial. In this research, I focus on reducing the dominant energy consumption of DRAM access by embedded compression.
DRAM access power is proportional to its volume, so it can be reduced by compressing data before storing them to DRAM and decompressing data after fetched back. Hence, I researched on the embedded compression for embedded video and vision systems. I published two journal and three international conference papers in this year.

Current Status of Research Progress
Current Status of Research Progress

2: Research has progressed on the whole more than it was originally planned.

Reason

DRAM access power is proportional to its volume, so it can be reduced by compressing data before storing them to DRAM and decompressing data after fetched back. The main DRAM access for computer vision algorithms includes the input images, the intermediate results of feature maps and the weight models. The compression of input images has been done before. Hence, for the latter two DRAM access, the two-year project is divided into four parts (P), including the compression of feature maps (P1), the compression of pre-trained weight models (P2), training based on the compressed weight models (P3), and hardware implementation of the above compression algorithms (P4). As scheduled for the first year, P1 and P2 have been finished, and some preparations for P3 have been done.

Strategy for Future Research Activity

In the second year, the main works include:
<Part 3- training based on the compressed weights> to design the EC for weight in the training process. According to the study of 32-bit float training process, I will try to design a weight compression algorithm with a dynamic quantization. Moreover, for the training stage, some issues may be caused by applying lossy EC, more time will be spent on testing this work.
<Part 4- hardware implementation and efficient memory organization> to finish hardware implementations of EC, respectively for feature maps and weights. It contains the architecture design, RTL code writing, simulation, synthesis, the analysis of power dissipation and memory organization.
<Summary of this EC framework: finally, I will write a summary of this research.

  • Research Products

    (5 results)

All 2018 2017

All Journal Article (2 results) (of which Peer Reviewed: 2 results) Presentation (3 results) (of which Int'l Joint Research: 3 results)

  • [Journal Article] Distortion Control and Optimization for Lossy Embedded Compression in Video Coded System2017

    • Author(s)
      Li Guo, Dajiang Zhou, Shinji Kimura, and Satoshi Goto
    • Journal Title

      IEICE Trans. On Fundamentals of Electronics, Communications and Computer Sciences

      Volume: E100-A Pages: 2416-2424

    • DOI

      https://doi.org/10.1587/transfun.E100.A.2416

    • Peer Reviewed
  • [Journal Article] Framework and VLSI Architecture of Measurement-Domain Intra Prediction for Compressively Sensed Visual Contents2017

    • Author(s)
      Jianbin Zhou, Dajiang Zhou, Li Guo, Takeshi Yoshimura, and Satoshi Goto
    • Journal Title

      IEICE Trans. On Fundamentals of Electronics, Communications and Computer Sciences

      Volume: E100-A Pages: 2869-2877

    • DOI

      https://doi.org/10.1587/transfun.E100.A.2869

    • Peer Reviewed
  • [Presentation] Sparseness Ratio Allocation and Neuron Re-pruning for Neural Networks Compression2018

    • Author(s)
      Li Guo, Dajiang Zhou, Jinjia Zhou, and Shinji Kimura
    • Organizer
      IEEE Int. Symposium on Circuits and Systems (ISCAS)
    • Int'l Joint Research
  • [Presentation] Embedded Frame Compression for Energy-Efficient Computer Vision Systems2018

    • Author(s)
      Li Guo, Dajiang Zhou, Jinjia Zhou, and Shinji Kimura
    • Organizer
      IEEE Int. Symposium on Circuits and Systems (ISCAS)
    • Int'l Joint Research
  • [Presentation] Measurement-Domain Intra Prediction Framework for Compressively Sensed Images2017

    • Author(s)
      Jianbin Zhou, Dajiang Zhou, Li Guo, Takeshi Yoshimura, and Satoshi Goto
    • Organizer
      IEEE Int. Symposium on Circuits and Systems (ISCAS)
    • Int'l Joint Research

URL: 

Published: 2018-12-17  

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