A multi-channel autofocusing scheme for gray-level shape scale detection
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This paper describes the implementation of a multi-channel autofocusing scheme capable of automatically detecting gray-level shape scales. The scale concept in the vision literature stands for the characteristic length over which gray-level variations in the image take place and/or the operator size used for processing the given image. The proposed scheme allows for a data-driven multichannel organization selectively sensitive to spatial frequency and size which is biologically inspired by the behavior of visual cortex and retinal cells. We investigate the suitability of several band-pass filter based autofocusing criteria for the scale selection. In scale-space representation where the gray-level shape is generally comprised of multiple structures at different levels of scale, it is often not possible to obtain an image in which all the structures are described at their best scale levels, because if one structure is well-enhanced, the others appear blurred. At best, some forms of compromise among the structures at different scale levels may be sought. To overcome this problem, we present an efficient multi-channel autofocusing scheme which may be employed to automatically describe each gray-level structure at its most suitable level. The ability to decompose a complex problem-that of where to look as well as how to concentrate on certain features in the input data-into simpler subproblems is a major motivation for using the proposed scheme. In the absence of further information, the information derived through such a formulation may serve as a guide to subsequent processing requiring knowledge about the scales at which a grey-level structure with particular spectrum components (high-, medium- or low-frequency content) occurs.
论文关键词:Gray-level shape representation,Spatial frequency channels,Automatic scale selection,Antialiasing index,Autofocusing criteria
论文评审过程:Received 11 January 1996, Accepted 21 November 1996, Available online 7 June 2001.
论文官网地址:https://doi.org/10.1016/S0031-3203(96)00194-X