Histogram Preserving Image Transformations

作者:Efstathios Hadjidemetriou, Michael D. Grossberg, Shree K. Nayar

摘要

Histograms are used to analyze and index images. They have been found experimentally to have low sensitivity to certain types of image morphisms, for example, viewpoint changes and object deformations. The precise effect of these image morphisms on the histogram, however, has not been studied. In this work we derive the complete class of local transformations that preserve or scale the magnitude of the histogram of all images. We also derive a more general class of local transformations that preserve the histogram relative to a particular image. To achieve this, the transformations are represented as solutions to families of vector fields acting on the image. The local effect of fixed points of the fields on the histograms is also analyzed. The analytical results are verified with several examples. We also discuss several applications and the significance of these transformations for histogram indexing.

论文关键词:histogram preservation, Hamiltonian transformation, local transformation, weak perspective projection, paraperspective projection, histogram based recognition

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论文官网地址:https://doi.org/10.1023/A:1012356022268