基于深度学习的端到端视频压缩技术综述与评价

H. M. Yasin, S. Y. Ameen
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引用次数: 6

摘要

近年来,通过互联网和其他应用程序的视频处理和传输呈指数级增长。由于带宽、处理和存储的限制,端到端视频压缩的需求越来越大。已经开发了许多传统的方法来压缩视频。然而,随着人工智能的广泛使用,人工智能,如深度学习(DL)已经成为执行不同任务的最佳替代方案,在过去几年中也被用于改进视频压缩的选择,其主要目标是在保持相同视频质量的同时降低压缩比。基于神经网络(nn)的视频压缩研究主要集中在两个不同的方向:第一,通过在相同的编解码器框架中集成更好的预测来增强当前的视频编解码器;第二,整体的端到端VC系统方法。虽然一些结果是乐观的,结果很好,但以前没有报道过突破。本文回顾了新的研究工作,包括一些有影响力的文章的样本,证明。进一步,描述在使用深度学习进行端到端视频压缩方面的各种突出问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Review and Evaluation of End-to-End Video Compression with Deep-Learning
Recent years have shown exponential growth in video processing and transfer through the Internet and other applications. With the restriction on bandwidth, processing, and storage, there is an extensive demand for end-to-end video compression. Many conventional methods have been developed to compress video. However, with the extensive use of Artificial Intelligence, AI, such as Deep Learning (DL) have emerged as a best-of-breed alternative for performing different tasks have also been used in the option of improving video compression in the last years, with the primary objective of reducing compression ratio while preserving the same video quality. Evolving video compression research based on Neural Networks (NNs) focuses on two distinct directions: First, enhancing current video codecs by better predictions integrated even in the same codec framework, and second, holistic end-to-end VC systems approach. Although some of the outcomes are optimistic and the results are well, no breakthrough has been reported previously. This paper reviews new research work, including samples of a few influential articles that demonstrate. Further, describe the various highlighted issues in the area of using DL for end-to-end video compression.
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