Design and Development of Deep learning based Video Compression for High Efficient Video Scheme
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Abstract
Neural networks blended with video processing will be the current topic in
newlinediscussion during this era. The impact of deep learning networks and CNNs in
newlinevideo compression is a detailed topic to discuss in the current era because the
newlineadvancement and efficiency improvement acquired and going to be acquired from
newlinethat are expected to be tremendous. The advancement in the area of video
newlinecompression becomes a need. Combining the deep learning techniques in
newlineprediction, encoding, etc. of video compression helps it act smarter than it is and
newlineprovide better advancement and efficiency in compression technique by
newlineintelligently handling each steps in compression. The main focus is to merge the
newlinedeep learning techniques in various steps of video compression to evolve a smart
newlineand efficient deep learning-based compression technique. Advantages of involving
newlineneural networks in video processing include the content adaptivity of neural
newlinenetworks compared to traditional methods. CNN and deep learning models can use
newlineboth near and far pixel details, whereas traditional signal processing can utilise
newlineonly neighbouring pixels. Content analysis is an advantage in CNN. Incorporating
newlinethe goodness of deep learning to make advancements in the traditional steps if
newlinecompression helps in a smart compression method that enhances the efficiency of
newlineexisting compression techniques.
newlineThe main objective of this research is to integrate deep learning techniques into
newlinedifferent stages of video compression, with the aim of creating an intelligent and
newlineefficient deep learning-based compression methodology. One of the advantages of
newlineusing deep learning in video processing is the ability of neural networks to adapt to
newlinecontent variations, surpassing traditional approaches. Unlike conventional signal
newlineprocessing, convolutional neural networks (CNN) and deep learning models can
newlineleverage both local and global pixel details, benefiting from content analysis. By
newlineharnessing the strengths of deep learning,
newline