Title :
The recognition of shapes in binary images using a gradient classifier
Author :
Brandt, Robert D. ; Wang, Yao ; Laub, Alan J. ; Mitra, Sanjit K.
Author_Institution :
Dept. of Electr. & Comput. Eng., Wayne State Univ., Detroit, MI, USA
Abstract :
The authors consider a prototype-based binary image classifier that makes comparisons based on blurred representations of the images. The blurring induces a metric on the space of all images that varies continuously under continuous deformation of the image plane. This blurred representation is suitable for direct implementation of a nearest-neighbor classifier. However, it is still desirable to have a representation which is invariant under certain spatial deformations, such as rotation, translation, and scaling of the image plane. A representation which is invariant under these transformation is produced by transforming an input to a local minimum of its distance from each prototype simultaneously. These minima are found by performing a gradient descent on an appropriate error surface over the transformation parameters. The error functional is the L2-norm of the difference between the blurred prototype and the blurred input. The resulting classifier makes more efficient use of prototypes than does the nearest-neighbor classifier
Keywords :
pattern recognition; picture processing; L2-norm; binary image classifier; blurred representations; gradient classifier; local minimum; nearest-neighbor classifier; pattern recognition; picture processing; rotation invariance; scaling invariance; shape recognition; spatial deformations; translation invariance; Cybernetics; Fourier transforms; Humans; Image recognition; Image representation; Nearest neighbor searches; Pattern recognition; Pixel; Prototypes; Shape;
Journal_Title :
Systems, Man and Cybernetics, IEEE Transactions on