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Efficient Super-Resolution Image Reconstruction Applied to Surveillance Video Captured by Small Unmanned Aircraft Systems

机译:高效的超高分辨率图像重建在小型无人机系统捕获的监视视频中的应用

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The concept surrounding super-resolution image reconstruction is to recover a highly-resolved image from a series of low-resolution images via between-frame subpixel image registration. In this paper, we propose a novel and efficient super-resolution algorithm, and then apply it to the reconstruction of real video data captured by a small Unmanned Aircraft System (UAS). Small UAS aircraft generally have a wingspan of less than four meters, so that these vehicles and their payloads can be buffeted by even light winds, resulting in potentially unstable video. This algorithm is based on a coarse-to-fine strategy, in which a coarsely super-resolved image sequence is first built from the original video data by image registration and bi-cubic interpolation between a fixed reference frame and every additional frame. It is well known that the median filter is robust to outliers. If we calculate pixel-wise medians in the coarsely super-resolved image sequence, we can restore a refined super-resolved image. The primary advantage is that this is a noniterative algorithm, unlike traditional approaches based on highly-computational iterative algorithms. Experimental results show that our coarse-to-fine super-resolution algorithm is not only robust, but also very efficient. In comparison with five well-known super-resolution algorithms, namely the robust super-resolution algorithm, bi-cubic interpolation, projection onto convex sets (POCS), the Papoulis-Gerchberg algorithm, and the iterated back projection algorithm, our proposed algorithm gives both strong efficiency and robustness, as well as good visual performance. This is particularly useful for the application of super-resolution to UAS surveillance video, where real-time processing is highly desired.
机译:围绕超分辨率图像重建的概念是通过帧间子像素图像配准从一系列低分辨率图像中恢复高分辨率图像。在本文中,我们提出了一种新颖而有效的超分辨率算法,然后将其应用于重建小型无人机系统(UAS)捕获的真实视频数据。小型UAS飞机的翼展通常小于4米,因此,即使是微风,这些车辆及其有效载荷也可能会受到打击,从而可能导致视频不稳定。该算法基于从粗到精的策略,其中首先通过图像配准和固定参考帧与每个其他帧之间的双三次插值,从原始视频数据构建一个粗糙的超分辨图像序列。众所周知,中值滤波器对异常值具有鲁棒性。如果我们在粗糙的超分辨图像序列中计算像素级中值,则可以恢复精炼的超分辨图像。主要优点是,这是一种非迭代算法,与基于高度计算迭代算法的传统方法不同。实验结果表明,我们的从粗到细的超分辨率算法不仅鲁棒,而且效率很高。与鲁棒超分辨率算法,双三次插值,凸集投影(POCS),Papoulis-Gerchberg算法和迭代反投影算法这五种著名的超分辨率算法相比,我们提出的算法给出了强大的效率和鲁棒性,以及良好的视觉效果。这对于将超分辨率应用到非常需要实时处理的UAS监视视频特别有用。

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