Self-organization and associative memory: 3rd edition
Self-organization and associative memory: 3rd edition
Neural Computers
Parallel distributed processing: explorations in the microstructure of cognition, vol. 1: foundations
Algorithms for Graphics and Imag
Algorithms for Graphics and Imag
Combinatorial Algorithms: Theory and Practice
Combinatorial Algorithms: Theory and Practice
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The computer-vision problem of determining object orientation from the consensus of orientations of individual symbols or marks is examined. The problem arises in automatic inspection where orientation can be detected from printed text but there is no knowledge of the content of the text. This is a high-dimensional classification problem, and there is a requirement for highly accurate detection and rapid processing. The typical multilayer threshold networks are seen as unsuitable, and the optimal Bayesian detector is derived and found to have the highly parallel structure of a feedforward network. The learning vector quantization neural network method of T. Kohonen (1988) is also applied. Experimental results, comparisons, and a complete implementation are described.