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This scientific-analytical paper best process for image recognition and classification with a neural system (Keras) using the R programming tries to investigate the sample pictures to recognize and classification of test pictures. In malice of the fact that there is a wide research gap between a picture classification of bitmap images when there were mostly linked with images for grouping with an outline of picture information. This article attempts to look into the image recognition and classification of two types of pictures using multiple neural network systems using multiple convolution bitmap picture requirements. Its motivation is to explain the most elementary method for grouping of picture data using deep machine learning of neural whose data structure was on highly dimensional of images. The outputs were adequately clarified with various intermediate plots and graphical translation picture information. Keras

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Why is it important?

This scientific-analytical paper best process for image recognition and classification with a neural system (Keras) using the R programming tries to investigate the sample pictures to recognize and classification of test pictures. In malice of the fact that there is a wide research gap between a picture classification of bitmap images when there were mostly linked with images for grouping with an outline of picture information. This article attempts to look into the image recognition and classification of two types of pictures using multiple neural network systems using multiple convolution bitmap picture requirements. Its motivation is to explain the most elementary method for grouping of picture data using deep machine learning of neural whose data structure was on highly dimensional of images. The outputs were adequately clarified with various intermediate plots and graphical translation picture information. Keras

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This page is a summary of: Keras: The Best Machine Learning Process for Image Recognition and Classification, January 2020, Springer Science + Business Media,
DOI: 10.1007/978-3-030-42363-6_123.
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