Abstract :
Characterization of second order local image structure by a 6D vector (or jet) of Gaussian derivative measurements is considered. We consider the affect on jets of a group of transformations-affine intensity-scaling, image rotation and reflection, and their compositions-that preserve intrinsic image structure. We show how this group stratifies the jet space into a system of orbits. Considering individual orbits as points, a 3D orbifold is defined. We propose a norm on jet space which we use to induce a metric on the orbifold. The metric tensor shows that the orbifold is intrinsically curved. To allow visualization of the orbifold and numerical computation with it, we present a mildly-distorting but volume-preserving embedding of it into euclidean 3-space. We call the resulting shape, which is like a flattened lemon, the second order local-image-structure solid. As an example use of the solid, we compute the distribution of local structures in noise and natural images. For noise images, analytical results are possible and they agree with the empirical results. For natural images, an excess of locally 1D structure is found.
Keywords :
Gaussian processes; image denoising; 3D orbifold visualization; 6D vector; Gaussian derivative measurement; euclidean 3-space; image reflection; intrinsic image structure; jet space; metric tensor; natural image; noise image; orbit system; second order local-image-structure solid; transformations-affine intensity-scaling image rotation; volume-preserving embedding; Distributed computing; Embedded computing; Extraterrestrial measurements; Noise shaping; Orbits; Reflection; Shape; Solids; Tensile stress; Visualization; Scale space; feature analysis; image derivatives; natural images.; noise;