双侧视频放大滤波器

Shoichiro Takeda, K. Niwa, Mariko Isogawa, S. Shimizu, Kazuki Okami, Y. Aono
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引用次数: 3

摘要

欧拉视频放大技术(EVM)已经发展到可以放大目标频率下的细微运动,即使是在物体剧烈运动的情况下。然而,现有的EVM方法往往不能在真实视频中产生理想的结果,因为(1)错误地提取非目标频率的细微运动,(2)当发生大的de/加速度运动时(例如,物体突然启动、停止或改变方向),结果会崩溃。为了提高EVM在真实视频上的性能,本文提出了一种双边视频放大滤波器(BVMF),该滤波器提供了简单而鲁棒的时间滤波。BVMF有两个内核;(I)一个核通过一个高斯拉普拉斯函数进行时间带通滤波,该函数的通频带以单位增益在目标频率处达到峰值;(II)另一个核通过傅里叶移位定理对输入信号的强度进行高斯滤波,排除感兴趣幅度以外的大运动。因此,无论运动动力学如何,BVMF只提取具有目标频率的细微运动,而排除感兴趣幅度以外的大运动。此外,BVMF在时间域和强度域同时运行两个核,就像双边滤波器在空间域和强度域一样。这简化了实现,并且作为次要效果,保持了较低的内存使用量。在合成视频和真实视频上进行的实验表明,BVMF优于最先进的方法。
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Bilateral Video Magnification Filter
Eulerian video magnification (EVM) has progressed to magnify subtle motions with a target frequency even under the presence of large motions of objects. However, existing EVM methods often fail to produce desirable results in real videos due to (1) misextracting subtle motions with a non-target frequency and (2) collapsing results when large de/acceleration motions occur (e.g., objects suddenly start, stop, or change direction). To enhance EVM performance on real videos, this paper proposes a bilateral video magnification filter (BVMF) that offers simple yet robust temporal filtering. BVMF has two kernels; (I) one kernel performs temporal bandpass filtering via a Laplacian of Gaussian whose passband peaks at the target frequency with unity gain and (II) the other kernel excludes large motions outside the magnitude of interest by Gaussian filtering on the intensity of the input signal via the Fourier shift theorem. Thus, BVMF extracts only subtle motions with the target frequency while excluding large motions outside the magnitude of interest, regardless of motion dynamics. In addition, BVMF runs the two kernels in the temporal and intensity domains simultaneously like the bilateral filter does in the spatial and intensity domains. This simplifies implementation and, as a secondary effect, keeps the memory usage low. Experiments conducted on synthetic and real videos show that BVMF outperforms state-of-the-art methods.
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