With the advent of digital video cameras, it has become possible to process measurement data using a computer, which has led to a wide range of new tasks in digital signal processing. Examples of such tasks are perimeter observation and detection of a moving object, recognition of a moving object, and identification of an object. Research and development of algorithms for processing video data, as a rule, requires a time-consuming computational experiment on model and real data of a large volume. Therefore, it is important to correctly organize the computational process when modifying and testing algorithms.
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Muminov, Bahodir prof.
"RAPID SELECTION OF MOVING WAGONS IN THE SEQUENCE OF VIDEO FRAMES BASED ON THE METHOD OF CALCULATING THE OPTICAL FLOW,"
Bulletin of TUIT: Management and Communication Technologies: Vol. 3
, Article 1.
Available at: https://uzjournals.edu.uz/tuitmct/vol3/iss1/1