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A novel multi-frame super resolution algorithm for surveillance camera image reconstruction

机译:一种新型的监控摄像机图像重建多帧超分辨率算法

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This paper gives a loom towards the growing spatial resolution necessary to beat the limitations of the imaging technology in surveillance and security disciplines. It has been observed that metropolis cities worldwide invest huge sum of money in surveillance camera system but few are closely observing the benefits and the costs of those investments and to measure the overall impact of surveillance cameras on crime rates. The low resolution coupled with poor quality optics is not be enough to identify the subject of interest in crowd, from a distance, in bad weather and any other limiting factor. In this paper we have introduced multi-frame super-resolution technique that does not require explicit motion estimation and will be useful for producing imagery evidence that the police might reasonably accept as proof of someone's identity. Mostly the research is done in this area by taking a SR image and then after adding their own noise patterns where as our algorithm are working on actual LR images of surveillance camera and getting a SR image while removing the original blur and noise. Our algorithm requires the training set of Low resolution (LR) images from a still camera to produce High resolution (HR) image data and enhances it using anisotropic Diffusion and De-noising. In the image based representations, this technique of super resolution provides a great step towards resolution independence. The application of this method was successfully demonstrated for the restoration from a short low resolution set of images into a super resolved image. This super resolution algorithm works best when the Diffusion is applied and noise reduction filters are applied.
机译:本文为克服监视和安全领域中成像技术的局限性所必需的日益增长的空间分辨率提供了一个机会。据观察,全世界的大城市在监视摄像头系统上投入了大量资金,但很少有人密切关注这些投资的收益和成本,并无法衡量监视摄像头对犯罪率的总体影响。低分辨率和劣质的光学器件不足以从远处,恶劣的天气和任何其他限制因素中识别出人群中的关注对象。在本文中,我们引入了多帧超分辨率技术,该技术不需要显式的运动估计,将有助于生成图像证据,证明警察可以合理地接受该图像作为某人身份的证明。大多数情况下,是通过拍摄SR图像,然后添加自己的噪声模式来完成该领域的研究,因为我们的算法正在对监控摄像机的实际LR图像进行处理,并在去除原始模糊和噪声的同时获取SR图像。我们的算法要求从静态相机中训练出低分辨率(LR)图像集,以生成高分辨率(HR)图像数据,并使用各向异性扩散和降噪功能对其进行增强。在基于图像的表示中,这种超分辨率技术为分辨率独立性迈出了重要一步。成功地证明了该方法的应用,可以从短的低分辨率图像集还原为超分辨图像。当应用“扩散”并且应用了降噪滤波器时,此超分辨率算法最有效。

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