• DocumentCode
    815441
  • Title

    Multiscale Hybrid Linear Models for Lossy Image Representation

  • Author

    Hong, Wei ; Wright, John ; Huang, Kun ; Ma, Yi

  • Author_Institution
    DSP Solutions Res. & Dev. Center, Texas Instruments, Dallas, TX
  • Volume
    15
  • Issue
    12
  • fYear
    2006
  • Firstpage
    3655
  • Lastpage
    3671
  • Abstract
    In this paper, we introduce a simple and efficient representation for natural images. We view an image (in either the spatial domain or the wavelet domain) as a collection of vectors in a high-dimensional space. We then fit a piece-wise linear model (i.e., a union of affine subspaces) to the vectors at each downsampling scale. We call this a multiscale hybrid linear model for the image. The model can be effectively estimated via a new algebraic method known as generalized principal component analysis (GPCA). The hybrid and hierarchical structure of this model allows us to effectively extract and exploit multimodal correlations among the imagery data at different scales. It conceptually and computationally remedies limitations of many existing image representation methods that are based on either a fixed linear transformation (e.g., DCT, wavelets), or an adaptive uni-modal linear transformation (e.g., PCA), or a multimodal model that uses only cluster means (e.g., VQ). We will justify both quantitatively and experimentally why and how such a simple multiscale hybrid model is able to reduce simultaneously the model complexity and computational cost. Despite a small overhead of the model, our careful and extensive experimental results show that this new model gives more compact representations for a wide variety of natural images under a wide range of signal-to-noise ratios than many existing methods, including wavelets. We also briefly address how the same (hybrid linear) modeling paradigm can be extended to be potentially useful for other applications, such as image segmentation
  • Keywords
    image representation; image sampling; principal component analysis; GPCA; downsampling scale; generalized principal component analysis; image representation; imagery data; linear transformation; multiscale hybrid linear model; spatial domain; Computational efficiency; Computational modeling; Data mining; Discrete cosine transforms; Image representation; Piecewise linear techniques; Principal component analysis; Signal to noise ratio; Vectors; Wavelet domain; Generalized principal component analysis; hybrid linear model; image representation; wavelets;
  • fLanguage
    English
  • Journal_Title
    Image Processing, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1057-7149
  • Type

    jour

  • DOI
    10.1109/TIP.2006.882016
  • Filename
    4011959