Edge-based motion and intensity prediction for video super-resolution

Jen-Wen Wang, C. Chiu
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引用次数: 3

Abstract

Full image based motion prediction is widely used in video super-resolution (VSR) that results outstanding outputs with arbitrary scenes but costs huge time complexity. In this paper, we propose an edge-based motion and intensity prediction scheme to reduce the computation cost while maintain good enough quality simultaneously. The key point of reducing computation cost is to focus on extracted edges of the video sequence in accordance with human vision system (HVS). Bi-directional optical flow is usually adopted to increase the prediction accuracy but it also increase the computation time. Here we propose to obtain the backward flow from foregoing forward flow prediction which effectively save the heavy load. We perform a series of experiments and comparisons between existed VSR methods and our proposed edge-based method with different sequences and upscaling factors. The results reveal that our proposed scheme can successfully keep the super-resolved sequence quality and get about 4x speed up in computation time.
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基于边缘的视频超分辨率运动和强度预测
基于全图像的运动预测在视频超分辨率(VSR)中得到了广泛的应用,它在任意场景下的输出效果都很好,但时间复杂度很高。本文提出了一种基于边缘的运动和强度预测方案,以减少计算成本,同时保持足够好的质量。降低计算成本的关键是按照人类视觉系统(HVS)的要求,集中提取视频序列的边缘。通常采用双向光流来提高预测精度,但同时也增加了计算时间。本文提出了由前向流量预测得到后向流量的方法,有效地节省了负荷。我们对现有的VSR方法和我们提出的基于边缘的方法进行了一系列的实验和比较,这些方法具有不同的序列和升级因子。结果表明,该方案在保持超分辨序列质量的同时,计算速度提高了4倍左右。
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