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Coding Estimation based on Rate Distortion Control of H.264 Encoded Videos for Low Latency Applications (2306.16366v1)

Published 16 Mar 2023 in cs.IT, cs.MM, math.IT, and math.OC

Abstract: In the field of video processing, advancements in video compression at various temporal and spatial resolutions which are needed in our research to quantify estimation of video quality whereabouts within spatial and temporal domain itself. It was necessary in our research to study the impacts of related video coding conditions upon perceptual quality due to issue raised by User Experience community regarding poor coding. But most of research studies are concerned with coding distortions affected by mostly due to poor coding which address high spatio-temporal resolutions. This paper presents overall 120 test scenarios for video sequences having low spatial and temporal spectral information were studied. Finally we concluded that even after achieving consistency within subjective scores, we got relevant data consistency after refining subjective scores, so it is not poor coding its due channel capacity which was traced out by rate distortion control.

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Citations (3)

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