Deep learning-based models have achieved remarkable performance in video super-resolution (VSR) in recent years, but most of these models are less applicable to online video applications. These methods solely consider the distortion quality and ignore crucial requirements for online applications, e.g., low latency and low model complexity. In this paper, we focus on online video transmission, in which VSR algorithms are required to generate high-resolution video sequences frame by frame in real time. To address such challenges, we propose an extremely low-latency VSR algorithm based on a novel kernel knowledge transfer method, named convolutional kernel bypass graft (CKBG). First, we design a lightweight network structure that does not require future frames as inputs and saves extra time costs for caching these frames. Then, our proposed CKBG method enhances this lightweight base model by bypassing the original network with ``kernel grafts'', which are extra convolutional kernels containing the prior knowledge of external pretrained image SR models. In the testing phase, we further accelerate the grafted multi-branch network by converting it into a simple single-path structure. Experiment results show that our proposed method can process online video sequences up to 110 FPS, with very low model complexity and competitive SR performance.
翻译:近年来,深层学习模型在超分辨率视频(VSR)方面取得了显著的成绩,但大多数这些模型都不太适用于在线视频应用程序。这些方法仅考虑扭曲质量,忽视了在线应用程序的关键要求,例如低悬浮度和低模型复杂性。在本文中,我们侧重于在线视频传输,其中VSR算法需要通过实时框架生成高分辨率视频序列框架。为了应对这些挑战,我们提议基于新型核心知识传输方法的极低的VSR算法,名为“卷心螺旋绕式螺旋绕行”(CKBG)。首先,我们设计了一个轻量网络结构,不需要未来框架作为输入,节省了剪动这些框架所需的额外时间费用。然后,我们提议的CKBG方法通过绕过原始网络“内核磁网”创建高分辨率视频序列框架来增强这一轻度基础模型。为了应对这些挑战,我们提议了一种包含事先经过培训的外部图像SR模型传输模式(CKBG)。在测试阶段,我们进一步加快了结压式多链结构结构,通过将一个简单的FBRAS系统测试结果转换成一个简单的系统。