Key Point Agnostic Frequency-Selective Mesh-to-Grid Image Resampling using Spectral Weighting

Viktoria Heimann, Nils Genser, A. Kaup
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引用次数: 5

Abstract

Many applications in image processing require re-sampling of arbitrarily located samples onto regular grid positions. This is important in frame-rate up-conversion, super-resolution, and image warping among others. A state-of-the-art high quality model-based resampling technique is frequency-selective mesh-to-grid resampling which requires pre-estimation of key points. In this paper, we propose a new key point agnostic frequency-selective mesh-to-grid resampling that does not depend on pre-estimated key points. Hence, the number of data points that are included is reduced drastically and the run time decreases significantly. To compensate for the key points, a spectral weighting function is introduced that models the optical transfer function in order to favor low frequencies more than high ones. Thereby, resampling artefacts like ringing are supressed reliably and the resampling quality increases. On average, the new AFSMR is conceptually simpler and gains up to 1.2 dB in terms of PSNR compared to the original mesh-to-grid resampling while being approximately 14.5 times faster.
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基于频谱加权的点不可知频率选择网格图像重采样
图像处理中的许多应用需要将任意位置的样本重新采样到规则的网格位置。这在帧率上转换、超分辨率和图像扭曲等方面非常重要。频率选择性网格重采样是一种基于模型的高质量重采样技术,它需要对关键点进行预估计。在本文中,我们提出了一种新的关键点不可知的频率选择网格到网格的重采样,它不依赖于预估计的关键点。因此,包含的数据点数量大大减少,运行时间也大大缩短。为了补偿关键点,引入了一个光谱加权函数来模拟光学传递函数,以便更倾向于低频而不是高频。从而可靠地抑制了振铃等重采样伪影,提高了重采样质量。平均而言,新的AFSMR在概念上更简单,与原始的网格到网格重采样相比,PSNR的增益高达1.2 dB,而速度约为14.5倍。
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