资源说明:paper extends to two dimensions the frame criterion developed by Daubechies for one-dimensional wavelets, and it
computes the frame bounds for the particular case of 2D Gabor wavelets. Completeness criteria for 2D Gabor image
representations are important because of their increasing role in many computer vision applications and also in modeling biological
vision, since recent neurophysiological evidence from the visual cortex of mammalian brains suggests that the filter response
profiles of the main class of linearly-responding cortical neurons (called simple cells) are best modeled as a family of self-similar 2D
Gabor wavelets. We therefore derive the conditions under which a set of continuous 2D Gabor wavelets will provide a complete
representation of any image, and we also find self-similar wavelet parameterizations which allow stable reconstruction by
summation as though the wavelets formed an orthonormal basis. Approximating a “tight frame” generates redundancy which allows
low-resolution neural responses to represent high-resolution images, as we illustrate by image reconstructions with severely
quantized 2D Gabor coefficients.
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