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An automatic restoration framework based on GPU-accelerated collateral filtering in brain MR images

机译:基于GPU加速脑部MR图像抵抗滤波的自动恢复框架

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摘要

Abstract Background Image restoration is one of the fundamental and essential tasks within image processing. In medical imaging, developing an effective algorithm that can automatically remove random noise in brain magnetic resonance (MR) images is challenging. The collateral filter has been shown a more powerful algorithm than many existing methods. However, the computation of the collateral filter is more time-consuming and the selection of the filter parameters is also laborious. This paper proposes an automatic noise removal system based on the accelerated collateral filter for brain MR images. Methods To solve these problems, we first accelerated the collateral filter with parallel computing using the graphics processing unit (GPU) architecture. We adopted the compute unified device architecture (CUDA), an application programming interface for the GPU by NVIDIA, to hasten the computation. Subsequently, the optimal filter parameters were selected and the automation was achieved by artificial neural networks. Specifically, an artificial neural network system associated with image feature analysis was adopted to establish the automatic image restoration framework. The best feature combination was selected by the paired t-test and the sequential forward floating selection (SFFS) methods. Results Experimental results indicated that not only did the proposed automatic image restoration algorithm perform dramatically faster than the traditional collateral filter, but it also effectively removed the noise in a wide variety of brain MR images. A speed up gain of 34 was attained to process an MR image, which completed within 0.1 s. Representative illustrations of brain tumor images demonstrated the capability of identifying lesion boundaries, which outperformed many existing methods. Conclusions We believe that our accelerated and automated restoration framework is promising for achieving robust filtering in many brain MR image restoration applications.
机译:摘要背景图像恢复是图像处理中的基本和基本任务之一。在医学成像中,开发一种有效算法,可以在脑磁共振(MR)图像中自动去除随机噪声是具有挑战性的。抵押滤波器已被示出比现有方法更强大的算法。然而,抵押滤波器的计算更耗时,滤波器参数的选择也是费力的。本文提出了一种基于脑MR图像加速侧滤波器的自动降噪系统。解决这些问题的方法,我们首先加速了使用图形处理单元(GPU)架构的并行计算的抵押滤波器。我们采用了计算统一设备架构(CUDA),NVIDIA的GPU应用程序编程接口,以加速计算。随后,选择最佳滤波器参数,通过人工神经网络实现自动化。具体地,采用与图像特征分析相关联的人工神经网络系统来建立自动图像恢复框架。通过配对的T检验和顺序前进浮动选择(SFF)方法选择最佳特征组合。结果实验结果表明,不仅提出的自动图像恢复算法比传统的抵押滤波器剧烈地执行,而且还有效地消除了各种大脑MR图像中的噪声。达到34的加速增益来处理MR图像,在0.1秒内完成。脑肿瘤图像的代表性插图证明了识别病变界限的能力,这优于许多现有方法。结论我们相信,我们加速和自动恢复框架是在许多脑MR图像恢复应用中实现强大的过滤。

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