The Estimation of TP Chromatic Aberration by Using Neural Network

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Abstract:

In this paper, the chromatic aberration estimator of touch panel (TP) decoration film by using neural network is presented. Through the training of neural network, the complex relationship between the chromatic aberration and the parameters of evaporation process of TP decoration film is expected to be found. Thus, an intelligent decision mechanism for the chromatic aberration of TP film on its evaporation process could be developed. Based on this mechanism, the technician could set the control parameters of evaporation in advance so that the quality of chromatic aberration of TP could meet the customer’s request.

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Advanced Materials Research (Volumes 189-193)

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2211-2214

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February 2011

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© 2011 Trans Tech Publications Ltd. All Rights Reserved

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