• DocumentCode
    3333568
  • Title

    Cumulative Attribute Space for Age and Crowd Density Estimation

  • Author

    Ke Chen ; Shaogang Gong ; Tao Xiang ; Loy, Chen Change

  • Author_Institution
    Queen Mary, Univ. of London, London, UK
  • fYear
    2013
  • fDate
    23-28 June 2013
  • Firstpage
    2467
  • Lastpage
    2474
  • Abstract
    A number of computer vision problems such as human age estimation, crowd density estimation and body/face pose (view angle) estimation can be formulated as a regression problem by learning a mapping function between a high dimensional vector-formed feature input and a scalar-valued output. Such a learning problem is made difficult due to sparse and imbalanced training data and large feature variations caused by both uncertain viewing conditions and intrinsic ambiguities between observable visual features and the scalar values to be estimated. Encouraged by the recent success in using attributes for solving classification problems with sparse training data, this paper introduces a novel cumulative attribute concept for learning a regression model when only sparse and imbalanced data are available. More precisely, low-level visual features extracted from sparse and imbalanced image samples are mapped onto a cumulative attribute space where each dimension has clearly defined semantic interpretation (a label) that captures how the scalar output value (e.g. age, people count) changes continuously and cumulatively. Extensive experiments show that our cumulative attribute framework gains notable advantage on accuracy for both age estimation and crowd counting when compared against conventional regression models, especially when the labelled training data is sparse with imbalanced sampling.
  • Keywords
    computer vision; feature extraction; image classification; learning (artificial intelligence); pose estimation; regression analysis; computer vision problems; crowd density estimation; cumulative attribute space; face pose estimation; high dimensional vector-formed feature input; human age estimation; imbalanced image samples; intrinsic ambiguities; learning problem; low-level visual feature extraction; novel cumulative attribute concept; observable visual features; regression problem; scalar-valued output; uncertain viewing conditions; Computational modeling; Data models; Estimation; Face; Training; Training data; Vectors; Age estimation; Crowd density estimation; Cumulative attributes;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Computer Vision and Pattern Recognition (CVPR), 2013 IEEE Conference on
  • Conference_Location
    Portland, OR
  • ISSN
    1063-6919
  • Type

    conf

  • DOI
    10.1109/CVPR.2013.319
  • Filename
    6619163