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Accurately Estimating PSF with Straight Lines Detected by Hough Transform

机译:用霍夫变换检测的直线准确估计PSF

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This paper presents an approach to estimating point spread function (PSF) from low resolution (LR) images. Existing techniques usually rely on accurate detection of ending points of the profile normal to edges. In practice however, it is often a great challenge to accurately localize profiles of edges from a LR image, which hence leads to a poor PSF estimation of the lens taking the LR image. For precisely estimating the PSF, this paper proposes firstly estimating a 1-D PSF kernel with straight lines, and then robustly obtaining the 2-D PSF from the 1-D kernel by least squares techniques and random sample consensus. Canny operator is applied to the LR image for obtaining edges and then Hough transform is utilized to extract straight lines of all orientations. Estimating 1-D PSF kernel with straight lines effectively alleviates the influence of the inaccurate edge detection on PSF estimation. The proposed method is investigated on both natural and synthetic images for estimating PSF. Experimental results show that the proposed method outperforms the state-of-the-art and does not rely on accurate edge detection.
机译:本文提出了一种从低分辨率(LR)图像估计点扩展函数(PSF)的方法。现有技术通常依赖于对垂直于边缘的轮廓终点的准确检测。然而,实际上,从LR图像中准确地定位边缘轮廓通常是很大的挑战,因此导致拍摄LR图像的镜头的PSF估计很差。为了精确估计PSF,本文首先提出了用直线估计一维PSF内核,然后通过最小二乘技术和随机样本共识从一维内核中稳健地获得二维PSF。将Canny算子应用于LR图像以获得边缘,然后利用霍夫变换提取所有方向的直线。用直线估计一维PSF内核有效地减轻了不正确的边缘检测对PSF估计的影响。在自然和合成图像上研究了所提出的方法,以估计PSF。实验结果表明,该方法优于最新技术,并且不依赖于精确的边缘检测。

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