Selection of the efficient video data processing strategy based on the analysis of statistical digital images characteristics https://doi.org/10.33108/visnyk_tntu2018.03.107

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Mykhailo Palamar
Myroslava Yavorska
Mykhailo Strembitskyi
Volodymyr Strembitskyi

Abstract

Technique of the video data redundancy estimation during the images processing in the real time is offered. The ways of reducing the incoming data while processing digital images are considered. An effective approach for solving the recognition problems while analyzing dynamic video information or for background recording when the portion of data about the color of digital image pixels passes from frame to frame without changes is suggested. The expediency of the image foldover has been analyzed in order to reduce the redundancy of the information presented in it by replacing the operation of information storage about the pixel color by calculating operations or combining the pixels portion under one colour attribute. The approach c motivated by the evaluations of the statistical digital image characteristics is considered.

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