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Collaborating Authors

 Rumelhart, David E.


Integrated Segmentation and Recognition of Hand-Printed Numerals

Neural Information Processing Systems

Neural network algorithms have proven useful for recognition of individual, segmented characters. However, their recognition accuracy has been limited by the accuracy of the underlying segmentation algorithm. Conventional, rule-based segmentation algorithms encounter difficulty if the characters are touching, broken, or noisy. The problem in these situations is that often one cannot properly segment a character until it is recognized yet one cannot properly recognize a character until it is segmented. We present here a neural network algorithm that simultaneously segments and recognizes in an integrated system. This algorithm has several novel features: it uses a supervised learning algorithm (backpropagation), but is able to take position-independent information as targets and self-organize the activities of the units in a competitive fashion to infer the positional information. We demonstrate this ability with overlapping hand-printed numerals.


Integrated Segmentation and Recognition of Hand-Printed Numerals

Neural Information Processing Systems

Neural network algorithms have proven useful for recognition of individual, segmentedcharacters. However, their recognition accuracy has been limited by the accuracy of the underlying segmentation algorithm. Conventional, rule-basedsegmentation algorithms encounter difficulty if the characters are touching, broken, or noisy. The problem in these situations is that often one cannot properly segment a character until it is recognized yetone cannot properly recognize a character until it is segmented. We present here a neural network algorithm that simultaneously segments and recognizes in an integrated system. This algorithm has several novel features: it uses a supervised learning algorithm (backpropagation), but is able to take position-independent information as targets and self-organize the activities of the units in a competitive fashion to infer the positional information. We demonstrate this ability with overlapping hand-printed numerals.


Active Semantic Networks as a Model of Human Memory

Classics

A general system to simulate human cognitive processes is described. The four-part system comprises a nodespace to store the network structure ; a supervisor; a transition network parser; and an interpreter. The method by which noun phrases operate and the process f or the determiner "the" is presented. An analysis of verb structures illustrates how network structures can be constructed from primitiv e verb definitions that get at the underlying structures of particular verbs. The paper concludes with an illustratio n of a problem in question-asking.In IJCAI-73: THIRD INTERNATIONAL JOINT CONFERENCE ON ARTIFICIAL INTELLIGENCE, 20-23 August 1973, Stanford University Stanford, California.