Video sharpness prediction based on motion blur analysis

Jongyoo Kim, Junghwan Kim, Woojae Kim, Jisoo Lee, Sanghoon Lee
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引用次数: 1

Abstract

For high bit rate video, it is important to acquire the video contents with high resolution, the quality of which may be degraded due to the motion blur from the movement of an object(s) or the camera. However, conventional sharpness assessments are designed to find focal blur caused either by defocusing or by compression distortion targeted for low bit rates. To overcome this limitation, we present a no-reference framework of a visual sharpness assessment (VSA) for high-resolution video based on the motion and scene classification. In the proposed framework, the accuracy of the sharpness estimation can be improved via pooling weighted by the visual perception from the object and camera movements and by the strong influence from the region with the highest sharpness. Based on the motion blur characteristics, the variance and the contrast over the spectral domain are used to quantify the perceived sharpness. Moreover, for the VSA, we extract the highly influential sharper regions and emphasize them by utilizing the scene adaptive pooling.
基于运动模糊分析的视频清晰度预测
对于高比特率视频来说,获得高分辨率的视频内容是很重要的,因为物体或摄像机的运动可能会造成运动模糊,从而降低视频质量。然而,传统的清晰度评估的目的是发现焦点模糊引起的散焦或压缩失真针对低比特率。为了克服这一限制,我们提出了一种基于运动和场景分类的高分辨率视频视觉清晰度评估(VSA)的无参考框架。在提出的框架中,可以通过由物体视觉感知和相机运动以及最高清晰度区域的强烈影响加权的池化来提高清晰度估计的准确性。基于运动模糊特性,利用光谱域上的方差和对比度来量化感知的清晰度。此外,对于VSA,我们利用场景自适应池提取高影响的锐利区域并对其进行强调。
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