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Titlebook: Computational Intelligence, Communications, and Business Analytics; Second International Jyotsna Kumar Mandal,Somnath Mukhopadhyay,Kousik D

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1865-0929 gence, Communications, and Business Analytics, CICBA 2018, held in Kalyani, India, in July 2018..The 76 revised full papers presented in the two volumes were carefully reviewed and selected from 240 submissions. The papers are organized in topical sections on computational intelligence; signal proce
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Zusammenfassung, Limitationen und Ausblick,version of the input image is pre-processed in various ways to compensate translation, rotation and noise removal. The four features, which does not vary due to scaling, are selected from the pre-processed image for the classification using k-NN classifier. Overall system accuracy of the proposed approach is 92% on a dataset of 100 images.
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A Hybrid Model for Optimal Pseudorandom Bit Sequence GenerationSkew Tent Chaotic map is proposed. A real coded crossover and mutation technique is proposed for RCGA. Seed values for chaotic map have been optimized by using all sub-functions of GA (RCGA). These seed values are used to generate optimal pseudorandom bit stream of finite length. The randomness of the bit stream is tested by using ..
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Analysis and Categorization of Human Facial Emotion Using PCA and Artificial Neural Networkused for segmentation. We use Principal component analysis (PCA) for dimension reduction of our dataset. A neural network is used to classify emotions. Finally a comparison has been made with some existing methods which prove the effectiveness of our proposed system final output in the form of emotions.
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