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DeepMag:Source-Specific Change Magnification Using Gradient Ascent

机译:DeepMag:使用渐变上升的源特定变化放大倍数

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摘要

Many important physical phenomena involve subtle signals that are difficult to observe with the unaided eye, yet visualizing them can be very informative. Current motion magnification techniques can reveal these small temporal variations in video, but require precise prior knowledge about the target signal, and cannot deal with interference motions at a similar frequency. We present DeepMag, an end-to-end deep neural video-processing framework based on gradient ascent that enables automated magnification of subtle color and motion signals from a specific source, even in the presence of large motions of various velocities. The advantages of DeepMag are highlighted via the task of video-based physiological visualization. Through systematic quantitative and qualitative evaluation of the approach on videos with different levels of head motion, we compare the magnification of pulse and respiration to existing state-of-the-art methods. Our method produces magnified videos with substantially fewer artifacts and blurring whilst magnifying the physiological changes by a similar degree.
机译:许多重要的物理现象涉及难以观察到唯一的眼睛的微妙信号,但可视化它们可能非常有效。当前运动倍率技术可以揭示视频中的这些小时间变化,但需要精确的关于目标信号的先验知识,并且不能以类似的频率处理干扰运动。我们介绍了基于梯度上升的端到端深神经视频处理框架,即使在各种速度的大运动的存在下,也能够从特定源自动放大微妙颜色和运动信号。通过基于视频的生理可视化的任务突出显示DeepMag的优点。通过系统的定量和定性评估具有不同头部运动级别的视频的方法,比较脉冲和呼吸的放大率,以实现现有的最先进的方法。我们的方法产生放大的视频,其具有基本较少的伪像和模糊,同时通过类似程度放大生理变化。

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