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Real-time wavelet denoising with edge enhancement for medical x- ray imaging

机译:具有边缘增强功能的实时小波去噪,用于医学X射线成像

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X-ray image visualized in real-time plays an important role in clinical applications. The real-time system design requires that images with the highest perceptual quality be acquired while minimizing the x-ray dose to the patient, which can result in severe noise that must be reduced. The approach based on the wavelet transform has been widely used for noise reduction. However, by removing noise, high frequency components belonging to edges that hold important structural information of an image are also removed, which leads to blurring the features. This paper presents a new method of x-ray image denoising based on fast lifting wavelet thresholding for general noise reduction and spatial filtering for further denoising by using a derivative model to preserve edges. General denoising is achieved by estimating the level of the contaminating noise and employing an adaptive thresholding scheme with variance analysis. The soft thresholding scheme is to remove the overall noise including that attached to edges. A new edge identification method of using approximation of spatial gradient at each pixel location is developed together with a spatial filter to smooth noise in the homogeneous areas but preserve important structures. Fine noise reduction is only applied to the non-edge parts, such that edges are preserved and enhanced. Experimental results demonstrate that the method performs well both visually and in terms of quantitative performance measures for clinical x-ray images contaminated by natural and artificial noise. The proposed algorithm with fast computation and low complexity provides a potential solution for real-time applications.
机译:实时可视化的X射线图像在临床应用中起着重要作用。实时系统设计要求在获得最高感知质量的图像的同时将对患者的X射线剂量降至最低,这可能会导致严重的噪声,必须降低噪声。基于小波变换的方法已被广泛用于降噪。然而,通过去除噪声,属于保持图像的重要结构信息的边缘的高频分量也被去除,这导致特征模糊。本文提出了一种基于快速提升小波阈值化的X射线图像去噪的新方法,该阈值用于一般的降噪,而空间滤波则通过使用导数模型保留边缘来进一步去噪。通过估计污染噪声的级别并采用带有方差分析的自适应阈值方案可以实现一般的降噪。软阈值方案是去除整体噪声,包括附着在边缘的噪声。开发了一种新的边缘识别方法,该方法使用每个像素位置的空间梯度近似值以及空间滤波器来平滑均质区域中的噪声,但保留重要结构。精细降噪仅适用于非边缘部分,因此可以保留和增强边缘。实验结果表明,该方法在视觉和定量性能方面均能很好地处理被自然噪声和人工噪声污染的临床X射线图像。所提出的算法具有快速计算和低复杂度的特点,为实时应用提供了潜在的解决方案。

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