2024
DOI: 10.3390/technologies12040052
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A Comparison of Machine Learning-Based and Conventional Technologies for Video Compression

Lesia Mochurad

Abstract: The growing demand for high-quality video transmission over bandwidth-constrained networks and the increasing availability of video content have led to the need for efficient storage and distribution of large video files. To improve the latter, this article offers a comparison of six video compression methods without loss of quality. Particularly, H.255, VP9, AV1, convolutional neural network (CNN), recurrent neural network (RNN), and deep autoencoder (DAE). The proposed decision is to use a dataset of high-qu… Show more

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Cited by 1 publication
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“…The profound convolution neural network (CNN), which has led the neural network to resurge lately and has achieved remarkable success in both fake keen and sign handling domains, provides a fresh and encouraging option for video and image reduction [25,26]. Conventional video compression solutions employ predictive coding engineering to encapsulate residual and motion data [27]. In this paper, we leverage both the old-fashioned design of the traditional video compression method [28] and the solid non-straight representation capabilities of neural networks to come up with the first full video compression deep model that enhances all the elements of video compression at the same time.…”
Section: Related Workmentioning
confidence: 99%
“…The profound convolution neural network (CNN), which has led the neural network to resurge lately and has achieved remarkable success in both fake keen and sign handling domains, provides a fresh and encouraging option for video and image reduction [25,26]. Conventional video compression solutions employ predictive coding engineering to encapsulate residual and motion data [27]. In this paper, we leverage both the old-fashioned design of the traditional video compression method [28] and the solid non-straight representation capabilities of neural networks to come up with the first full video compression deep model that enhances all the elements of video compression at the same time.…”
Section: Related Workmentioning
confidence: 99%