Massive-scale learning of image and video semantic concepts

被引:0
|
作者
20151800807707
机构
[1] Smith, J.R.
[2] Cao, L.
[3] Codella, N.C.F.
[4] Hill, M.L.
[5] Merler, M.
[6] Nguyen, Q.-B.
[7] Pring, E.
[8] Uceda-Sosa, R.A.
来源
| 1600年 / IBM Corporation卷 / 59期
关键词
Learning systems;
D O I
暂无
中图分类号
学科分类号
摘要
Rapid growth in the capture and generation of images and videos is driving the need for more efficient and effective systems for analyzing, searching, and retrieving this data. Specific challenges include supporting automatic content indexing at a large scale and accurately extracting a sufficiently large number of relevant semantic concepts to enable effective search. In this paper, we describe the development of a system for massive-scale visual semantic concept extraction and learning for images and video. The system models the visual semantic space using a hierarchical faceted classification scheme across objects, scenes, people, activities, and events and utilizes a novel machine learning approach that creates ensemble classifiers from automatically extracted visual features. The ensemble learning and extraction processes are easily parallelizable for distributed processing using Hadoop® and IBM InfoSphere® Streams, which enable efficient processing of large data sets. We report on various applications and quantitative and qualitative results for different image and video data sets. © 2015 IBM.
引用
收藏
页码:2 / 3
相关论文
共 50 条
  • [1] Massive-scale learning of image and video semantic concepts
    Smith, J. R.
    Cao, L.
    Codella, N. C. F.
    Hill, M. L.
    Merler, M.
    Nguyen, Q. -B.
    Pring, E.
    Uceda-Sosa, R. A.
    IBM JOURNAL OF RESEARCH AND DEVELOPMENT, 2015, 59 (2-3)
  • [2] MSSG: A framework for massive-scale semantic graphs
    Hartley, Timothy D. R.
    Catalyurek, Umit
    Ozguner, Fusun
    Yoo, Andy
    Kohn, Scott
    Henderson, Keith
    2006 IEEE INTERNATIONAL CONFERENCE ON CLUSTER COMPUTING, VOLS 1 AND 2, 2006, : 193 - +
  • [3] Deep learning is combined with massive-scale citizen science to improve large-scale image classification
    Devin P Sullivan
    Casper F Winsnes
    Lovisa Åkesson
    Martin Hjelmare
    Mikaela Wiking
    Rutger Schutten
    Linzi Campbell
    Hjalti Leifsson
    Scott Rhodes
    Andie Nordgren
    Kevin Smith
    Bernard Revaz
    Bergur Finnbogason
    Attila Szantner
    Emma Lundberg
    Nature Biotechnology, 2018, 36 : 820 - 828
  • [4] Deep learning is combined with massive-scale citizen science to improve large-scale image classification
    Sullivan, Devin P.
    Winsnes, Casper F.
    Akesson, Lovisa
    Hjelmare, Martin
    Wiking, Mikaela
    Schutten, Rutger
    Campbell, Linzi
    Leifsson, Hjalti
    Rhodes, Scott
    Nordgren, Andie
    Smith, Kevin
    Revaz, Bernard
    Finnbogason, Bergur
    Szantner, Attila
    Lundberg, Emma
    NATURE BIOTECHNOLOGY, 2018, 36 (09) : 820 - +
  • [5] Massive-scale streaming analytics
    Bader, David
    2016 IEEE 30TH INTERNATIONAL PARALLEL AND DISTRIBUTED PROCESSING SYMPOSIUM WORKSHOPS (IPDPSW), 2016, : 856 - 856
  • [6] Preface: Massive-scale analytics
    Soffer, Aya
    IBM JOURNAL OF RESEARCH AND DEVELOPMENT, 2013, 57 (3-4)
  • [7] Massive-scale image retrieval based on deep visual feature representation
    Zhu, Hongpeng
    JOURNAL OF VISUAL COMMUNICATION AND IMAGE REPRESENTATION, 2020, 70
  • [8] DNS for Massive-Scale Command and Control
    Xu, Kui
    Butler, Patrick
    Saha, Sudip
    Yao, Danfeng
    IEEE TRANSACTIONS ON DEPENDABLE AND SECURE COMPUTING, 2013, 10 (03) : 143 - 153
  • [9] Learning semantic visual concepts from video
    Liu, JC
    Bhanu, B
    16TH INTERNATIONAL CONFERENCE ON PATTERN RECOGNITION, VOL II, PROCEEDINGS, 2002, : 1061 - 1064
  • [10] Collecting conversations in a massive-scale world
    Lankes, R. David
    LIBRARY RESOURCES & TECHNICAL SERVICES, 2008, 52 (02): : 12 - 18