基于视频估计的下一点扩展函数监控加速盲去模糊方法

A. Güven, Ceren Özçelik, D. M. Sazak
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引用次数: 0

摘要

盲目去模糊引起了越来越多的关注。在现实问题中,需要对高分辨率图像进行处理,而模糊函数,即点扩散函数(PSF)大多是未知的,特别是在摄像机集成有效载荷与降落伞等监视系统中。psf依赖于它们之前的功能,因此我们通过集成先前准备的深度学习方法,使用我们提出的模型更快地执行去模糊过程。我们的系统由四个阶段组成:(i)使用现有的深度学习方法增强图像,(ii)获得psf, (iii)使用我们的模型预测下一个psf,以及(iv)使用我们开发的wienerfilter增强图像。实验发现待估计的psf数为测试图像中PSNR值开始下降的点。我们的模型使用了卷积LSTM层,该模型在性能和运行时间方面与其他最先进的模型进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accelerated Blind Deblurring Method via Video-based Estimation in Next Point Spread Functions for Surveillance
Blind deblurring has been attracting increased attention. In real-life problems, high-resolution images are needed to process and the blurring function, point spread function (PSF), is mostly unknown, especially in the surveillance systems such as camera integrated payload drop with a parachute. The PSFs are dependent on their previous functions, so we perform the deblurring process faster with our proposed model by integrating a previously prepared deep learning method. Our system consists of four phases: (i) enhancing images with an existing deep learning method, (ii) obtaining PSFs, (iii) predicting the next PSFs with our model, and (iv) enhancing the images with the wienerfiltering we developed. The number of PSFs to be estimated was experimentally found as the point at which the PSNR value began to decrease in the test images. Convolutional LSTM layers were used for our model which has been compared with other state-of-the-art models in terms of performance and running time.
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