Feature Preserving Image Smoothing Using a Continuous Mixture of Tensors.

Ozlem Subakan, Bing Jian, Baba C Vemuri, C Eduardo Vallejos
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引用次数: 19

Abstract

Many computer vision and image processing tasks require the preservation of local discontinuities, terminations and bifurcations. Denoising with feature preservation is a challenging task and in this paper, we present a novel technique for preserving complex oriented structures such as junctions and corners present in images. This is achieved in a two stage process namely, (1) All image data are pre-processed to extract local orientation information using a steerable Gabor filter bank. The orientation distribution at each lattice point is then represented by a continuous mixture of Gaussians. The continuous mixture representation can be cast as the Laplace transform of the mixing density over the space of positive definite (covariance) matrices. This mixing density is assumed to be a parameterized distribution, namely, a mixture of Wisharts whose Laplace transform is evaluated in a closed form expression called the Rigaut type function, a scalar-valued function of the parameters of the Wishart distribution. Computation of the weights in the mixture Wisharts is formulated as a sparse deconvolution problem. (2) The feature preserving denoising is then achieved via iterative convolution of the given image data with the Rigaut type function. We present experimental results on noisy data, real 2D images and 3D MRI data acquired from plant roots depicting bifurcating roots. Superior performance of our technique is depicted via comparison to the state-of-the-art anisotropic diffusion filter.

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使用连续混合张量的特征保持图像平滑。
许多计算机视觉和图像处理任务需要保存局部不连续、终止和分岔。特征保留去噪是一项具有挑战性的任务,在本文中,我们提出了一种新的技术来保留图像中存在的复杂定向结构,如结点和角。这是通过两个阶段的过程来实现的,即:(1)所有图像数据都经过预处理,使用可操纵的Gabor滤波器组提取局部方向信息。然后用连续的高斯分布表示每个点阵点的方向分布。连续混合表示可以表示为混合密度在正定(协方差)矩阵空间上的拉普拉斯变换。该混合密度被假定为一个参数化分布,即一个Wishart的混合物,其拉普拉斯变换用称为Rigaut型函数的封闭形式表达式来计算,该函数是Wishart分布参数的标量值函数。混合维希图中权值的计算被表述为一个稀疏反卷积问题。(2)然后通过给定图像数据与Rigaut类型函数的迭代卷积来实现特征保持去噪。我们展示了从植物根系中获得的噪声数据、真实二维图像和三维MRI数据的实验结果,这些数据描绘了分叉的根。通过与最先进的各向异性扩散滤波器的比较,描述了我们技术的优越性能。
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