# Sine-Cosine-Taylor-Like Method for Hole-Filler ICNN Simulation

@inproceedings{Senthilkumar2011SineCosineTaylorLikeMF, title={Sine-Cosine-Taylor-Like Method for Hole-Filler ICNN Simulation}, author={S. Senthilkumar and A. Rahni and M. Piah}, year={2011} }

Sine-Cosine-Taylor-Like method is employed to improve the performance of image or handwritten character recognition under improved cellular non-linear network environment. The ultimate aim of this paper is focused on developing an efficient design strategy for simulating hole filler under ICNN arrays with a set of inequalities satisfying its output characteristics by considering the parameter range.

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Sine-Cosine- Taylor like, Cosine Taylor like and Explicit Taylor like methods are used to solve image processing and initial value problems and the results disclose the effectiveness of adapted approaches to solve the considered problems. Expand

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