[机翻] 利用深卷积神经网络学习从一种新的基于骨架的表征中识别三维人体行为
    [期刊]
  • 《Computer Vision, IET》 2019年13卷3期

摘要 : Recognising human actions in untrimmed videos is an important challenging task. An effective three-dimensional (3D) motion representation and a powerful learning model are two key factors influencing recognition performance. In th... 展开

作者 Huy-Hieu Pham   Khoudour~ Louahdi   Crouzil~ Alain   Zegers~ Pablo   Velastin~ Sergio A.  
作者单位
期刊名称 《Computer Vision, IET》
页码/总页数 319-328 / 10
语种/中图分类号 英语 / TM  
关键词 object recognition   image colour analysis   image classification   image representation   image motion analysis   learning (artificial intelligence)   image sequences   video signal processing   feature extraction   convolutional neural nets   skeleton-based representation   human actions   untrimmed videos   three-dimensional motion representation   3D action recognition   3D joint coordinates   human body   skeleton sequences   colour encoding process   skeleton frame   colour-coded representation   complex 3D motions   residual network architecture   image-based representations   3D motion features   3D human action recognition   learning model   recognition performance   deep convolutional neural networks   action recognition benchmarks   MSR Action3D   NTU-RGB plus D  
DOI 10.1049/iet-cvi.2018.5014
馆藏号 IELEP0071
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