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Texture Characterization for Joint Compression and Classification Based on Human Perception

Research Authors
G. Fahmy, J. Black and S. Panchanathan
Research Department
Research Year
2006
Research Journal
IEEE Transactions on Image Processing, vol. 16, pp. 1389-1696 June 2006
Research Publisher
NULL
Research Vol
NULL
Research Rank
1
Research_Pages
NULL
Research Website
NULL
Research Abstract

Today’s multimedia applications demand sophisticated
compression and classification techniques in order to store, transmit, and retrieve audio-visual information efficiently. Over the last decade, perceptually based image compression methods have been gaining importance. These methods take into account the abilities (and the limitations) of human visual perception (HVP) when performing compression. The upcoming MPEG 7 standard also addresses the need for succinct classification and indexing of visual content for efficient retrieval. However, there
has been no research that has attempted to exploit the characteristics of the human visual system to perform both compression and classification jointly. One area of HVP that has unexplored potential
for joint compression and classification is spatial frequency perception. Spatial frequency content that is perceived by humans can be characterized in terms of three parameters, which are:1) magnitude; 2) phase; and 3) orientation. While the magnitude
of spatial frequency content has been exploited in several existing image compression techniques, the novel contribution of this paper is its focus on the use of phase coherence for joint compression and classification in the wavelet domain. Specifically, this paper describes a human visual system-based method for measuring the degree to which an image contains coherent (perceptible) phase information, and then exploits that information to provide joint
compression and classification. Simulation results that demonstrate the efficiency of this method are presented.