• DocumentCode
    253721
  • Title

    Continuous Manifold Based Adaptation for Evolving Visual Domains

  • Author

    Hoffman, Judy ; Darrell, Trevor ; Saenko, Kate

  • Author_Institution
    EECS, UC Berkeley, Berkeley, CA, USA
  • fYear
    2014
  • fDate
    23-28 June 2014
  • Firstpage
    867
  • Lastpage
    874
  • Abstract
    We pose the following question: what happens when test data not only differs from training data, but differs from it in a continually evolving way? The classic domain adaptation paradigm considers the world to be separated into stationary domains with clear boundaries between them. However, in many real-world applications, examples cannot be naturally separated into discrete domains, but arise from a continuously evolving underlying process. Examples include video with gradually changing lighting and spam email with evolving spammer tactics. We formulate a novel problem of adapting to such continuous domains, and present a solution based on smoothly varying embeddings. Recent work has shown the utility of considering discrete visual domains as fixed points embedded in a manifold of lower-dimensional subspaces. Adaptation can be achieved via transforms or kernels learned between such stationary source and target subspaces. We propose a method to consider non-stationary domains, which we refer to as Continuous Manifold Adaptation (CMA). We treat each target sample as potentially being drawn from a different subspace on the domain manifold, and present a novel technique for continuous transform-based adaptation. Our approach can learn to distinguish categories using training data collected at some point in the past, and continue to update its model of the categories for some time into the future, without receiving any additional labels. Experiments on two visual datasets demonstrate the value of our approach for several popular feature representations.
  • Keywords
    image classification; unsupervised learning; CMA; classic domain adaptation paradigm; continuous manifold based adaptation; continuous transform-based adaptation; discrete visual domains; fixed points; lighting; lower-dimensional subspaces; nonstationary domains; spam email; stationary domains; stationary source; target subspaces; training data; unsupervised learning task; visual classification task; visual datasets; Adaptation models; Cameras; Kernel; Manifolds; Speech recognition; Training data; Visualization;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Computer Vision and Pattern Recognition (CVPR), 2014 IEEE Conference on
  • Conference_Location
    Columbus, OH
  • Type

    conf

  • DOI
    10.1109/CVPR.2014.116
  • Filename
    6909511