Romanuke V. V.

A framework for classifier single training two-layer perceptron in a problem of turned 60-by-80-images classification


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Номер документа в системі:280892
Автор:Romanuke V. V.
Назва документа:A framework for classifier single training two-layer perceptron in a problem of turned 60-by-80-images classification
УДК004.032.26+004.93+519.8
Мова документуАнглійська
АннотаціяA 13-itemed scenario framework for classifier single training parameter optimization is developed. Formally, the problem is to find global extremum (mostly, minimum) of function as a classifier output parameter against its single training parameter. Linking the scenario theory to praxis, the classifier type has been decided on two-layer perceptron. Its input objects are monochrome images of a medium format, having a few thousands independent features. Within the framework, the programming environment has been decided on MATLAB, having powerful Neural Network Toolbox. Keeping in mind the stochasticity of the being minimized function, there is defined statistical -stability of its evaluation by a finite set of data. These data are mined in batch testings of the trained classifier. For exemplification of the scenario framework, there is optimized pixel-to-turn standard deviations ratio for training two-layer perceptron in classifying monochrome 60-by-80-images of the enlarged 26 English alphabet capitall
Кількість сторінокP. 85-93.
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