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Eighth International Conference on Document Analysis and Recognition (ICDAR'05)
Rejection strategy for Convolutional Neural Network by adaptive topology applied to handwritten digits recognition
Seoul, Korea
August 31-September 01
ISBN: 0-7695-2420-6
Hubert Cecotti, LORIA/CNRS Campus Scientifique, France
Abdel Belad, LORIA/CNRS Campus Scientifique, France
In this paper, we propose a rejection strategy for convolutional neural network models. The purpose of this work is to adapt the network?s topology in function of the geometrical error. A self-organizing map is used to change the links between the layers leading to a geometric image transformation occurring directly inside the network. Instead of learning all the possible deformation of a pattern, ambiguous patterns are rejected and the network?s topology is modified in function of their geometric errors thanks to a specialized self-organizing map. Our objective is to show how an adaptive topology, without a new learning, can improve the recognition of rejected patterns in the case of handwritten digits.
Citation:
Hubert Cecotti, Abdel Belad, "Rejection strategy for Convolutional Neural Network by adaptive topology applied to handwritten digits recognition," icdar, pp.765-769, Eighth International Conference on Document Analysis and Recognition (ICDAR'05), 2005
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