DEVELOPMENT OF AN ANN MODEL FOR DOWNSCALING
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Аннотация:
Downscaling, the process of reducing the spatial resolution of an image, is a fundamental task in image processing with applications ranging from multimedia compression to real-time graphics rendering. In this paper, we present the development of an Artificial Neural Network (ANN) tailored specifically for downscaling an input image from an 8x8 resolution to a 2x2 resolution.
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Библиографические ссылки:
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