Subpixel pattern recognition by image histograms

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摘要

Recognition of small patterns covering only a few pixels in an image cannot be done by conventional recognition methods. A theoretically new pattern recognition method has been developed for undersampled objects which are (much) smaller than the window-size of a picture element (pixel), i.e. these objects are of subpixel size. The proposed statistical technique compares the gray-level histogram of the patterns of a set of scanned objects to be examined with the (calculated) gray-level densities of different (in shape or size) possible objects, and the recognition is based on this comparison. This method does not need high-precision movement of scanning sensors or any additional hardware. Moreover, the examined patterns should be randomly distributed on the screen, or a random movement of camera is (or target or both are) needed. Effects of noise are analysed, and filtering processes are suggested in the histogram domain. Several examples of different object shapes (triangle, rectangle, square, circle, curving lines, etc.) are presented through simulations and experiments. A number of possible application areas are suggested, including astronomy, line-drawing analysis and industrial laser measurements.

论文关键词:Subpixel-recognition,Histogram noise filtering,Undersampling,Super-resolution,Image analysis,Pattern classification,Convolution,Statistical pattern recognition,Light-sensor arrays,Density estimation

论文评审过程:Received 6 January 1993, Revised 1 February 1994, Accepted 24 February 1994, Available online 19 May 2003.

论文官网地址:https://doi.org/10.1016/0031-3203(94)90146-5