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Locally optimized non-local means denoising for low-dose X-ray backscatter imagery

机译:针对低剂量X射线反向散射图像进行局部优化的非局部均值降噪

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摘要

While recent years have seen considerable progress in image denoising, the leading techniques have been developed for digital photographs or other images that can have very different characteristics than those encountered in X-ray applications. In particular here we examine X-ray backscatter (XBS) images collected by airport security systems, where images are piecewise smooth and edge information is typically more correlated with objects while texture is dominated by statistical noise in the detected signal. In this paper, we show how multiple estimates for a denoised XBS image can be combined using a variational approach, giving a solution that enhances edge contrast by trading off gradient penalties against data fidelity terms. We demonstrate the approach by combining several estimates made using the non-local means (NLM) algorithm, a widely used patch-based denoising method. The resulting improvements hold the potential for improving automated analysis of low-SNR X-ray imagery and can be applied in other applications where edge information is of interest.
机译:尽管近年来在图像降噪方面取得了长足的进步,但已经为数字照片或其他图像开发了领先的技术,这些技术可能具有与X射线应用程序所遇到的特征截然不同的特征。特别是在这里,我们检查了由机场安全系统收集的X射线反向散射(XBS)图像,其中图像是分段平滑的,边缘信息通常与物体更相关,而纹理主要由检测到的信号中的统计噪声所控制。在本文中,我们展示了如何使用变分方法来组合去噪XBS图像的多个估计,从而提供一种通过权衡梯度罚分和数据保真度项来增强边缘对比度的解决方案。我们通过结合使用非局部均值(NLM)算法(一种广泛使用的基于补丁的降噪方法)得出的估计值来演示该方法。所产生的改进具有改善低SNR X射线图像自动分析的潜力,并且可以应用于关注边缘信息的其他应用。

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