Real Time Motion Data Preprocessing

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Real Time Motion Data Preprocessing

There is a lot of redundant data for image processing in an image, in motion picture as well. The more data for image processing we have, the more time is needed for preprocessing it. That is why we need to work with important data only. In order to identify or classify motion, data processing in real time is needed.

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Journal of Electrical Engineering

The Journal of Slovak University of Technology

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