The search functionality is under construction.
The search functionality is under construction.

Keyword Search Result

[Keyword] life-log(2hit)

1-2hit
  • Performance Evaluation of Pipeline-Based Processing for the Caffe Deep Learning Framework

    Ayae ICHINOSE  Atsuko TAKEFUSA  Hidemoto NAKADA  Masato OGUCHI  

     
    PAPER

      Pubricized:
    2018/01/18
      Vol:
    E101-D No:4
      Page(s):
    1042-1052

    Many life-log analysis applications, which transfer data from cameras and sensors to a Cloud and analyze them in the Cloud, have been developed as the use of various sensors and Cloud computing technologies has spread. However, difficulties arise because of the limited network bandwidth between such sensors and the Cloud. In addition, sending raw sensor data to a Cloud may introduce privacy issues. Therefore, we propose a pipelined method for distributed deep learning processing between sensors and the Cloud to reduce the amount of data sent to the Cloud and protect the privacy of users. In this study, we measured the processing times and evaluated the performance of our method using two different datasets. In addition, we performed experiments using three types of machines with different performance characteristics on the client side and compared the processing times. The experimental results show that the accuracy of deep learning with coarse-grained data is comparable to that achieved with the default parameter settings, and the proposed distributed processing method has performance advantages in cases of insufficient network bandwidth between realistic sensors and a Cloud environment. In addition, it is confirmed that the process that most affects the overall processing time varies depending on the machine performance on the client side, and the most efficient distribution method similarly differs.

  • Ubiquitous Home: Retrieval of Experiences in a Home Environment

    Gamhewage C. DE SILVA  Toshihiko YAMASAKI  Kiyoharu AIZAWA  

     
    PAPER-Image Processing and Video Processing

      Vol:
    E91-D No:2
      Page(s):
    330-340

    Automated capture and retrieval of experiences at home is interesting due to the wide variety and personal significance of such experiences. We present a system for retrieval and summarization of continuously captured multimedia data from Ubiquitous Home, a two-room house consisting of a large number of cameras and microphones. Data from pressure based sensors on the floor are analyzed to segment footsteps of different persons. Video and audio handover are implemented to retrieve continuous video streams corresponding to moving persons. An adaptive algorithm based on the rate of footsteps summarizes these video streams. A novel method for audio segmentation using multiple microphones is used for video retrieval based on sounds with high accuracy. An experiment, in which a family lived in this house for twelve days, was conducted. The system was evaluated by the residents who used the system for retrieving their own experiences; we report and discuss the results.