基于卷积神经网络的快速视频超分辨率

Neeboy Nogueira, Shawnon Guedes, Vaishnavi Mardolker, Amar Parab, S. Aswale, Pratiksha R. Shetgaonkar
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引用次数: 0

摘要

深度学习技术的进步为图像和视频的高效放大铺平了道路。与放大图像类似,我们可以通过视频超分辨率的处理来达到更高的分辨率。本文简要介绍了现有的各种实现更高分辨率的方法和技术,并进行了比较,分析了现有方法的缺点并提出了解决方案。研究表明,卷积神经网络(CNN)的深度学习方法是实现视频超分辨率的良好解决方案。也有人指出,大多数现有的技术要么集中在准确性上,要么集中在降低复杂性上,其中音频问题也被忽视了。考虑到音频因素,建议采用一种创新的视频修饰技术来克服精度和复杂性之间的平衡。
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Expeditious Video Super Resolution Using Convolutional Neural Network
Advancements in deep learning techniques have paved a way for efficient up scaling of images and videos. Similar to up scaling an image, we can reach upto a higher resolution by the process of video super resolution. Various existing methods and technologies for achieving a higher resolution are briefly surveyed in this paper and compared to analyze the downfall of the existing approach and proposing a solution. It was ascertained that deep learning approach of Convolutional Neural Network (CNN) is favorable solution to carry out video super resolution. It was also noted that most of the existing techniques focused on either of accuracy or on decreasing complexity, wherein the question of audio was also neglected. Considering the audio factor a innovative video embellished technique is recommended to overcome the balance needed in precision and complexity.
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