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A parallel adaptive segmentation method based on SOM and GPU with application to MRI image processing

机译:基于SOM和GPU的并行自适应分割方法及其在MRI图像处理中的应用

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In this paper we develop a set of parallel algorithms for image segmentation basing on the authors' former work, the self-organizing map (SOM) based vector quantization (VQ) approach, by extending the method from serial computation to parallel processing, in order to accelerate the computation process. The parallel segmentation scheme is composed of a group of parallel algorithms for implementing the whole segmentation process, including parallel classification of the image into edge and non-edge pattern vectors, parallel training of an SOM network, parallel segmentation of the image by using the trained SOM model with VQ method, and adaptive parallel estimation of the segment number of the image being processed. In the paper, all the parallel algorithms have been implemented on graphic processing units (GPU) and applied to segmenting the human brain MRI images. The experimental results obtained in the work show that, compared with the original serial method implemented on CPU, the proposed parallel approach can achieve a significant improvement on the computation efficiency with overall speedup ratios increasing from 28.81 to 89.12 as image sizes increasing from 128 x 128 to 1024 x 1024, while keeping the segmentation performance unchanged. (C) 2016 Elsevier B.V. All rights reserved.
机译:在本文中,我们基于作者以前的工作,通过将方法从串行计算扩展到并行处理,开发了一套并行的图像分割算法,即基于自组织图(SOM)的矢量量化(VQ)方法。加快计算过程。并行分割方案由一组并行算法组成,用于实现整个分割过程,包括将图像并行分类为边缘和非边缘模式向量,对SOM网络进行并行训练,使用经过训练的图像对图像进行并行分割采用VQ方法的SOM模型,以及对要处理图像的段号的自适应并行估计。在本文中,所有并行算法均已在图形处理单元(GPU)上实现,并已应用于分割人脑MRI图像。在工作中获得的实验结果表明,与最初在CPU上执行的串行方法相比,该提议的并行方法可以显着提高计算效率,并且随着图像尺寸从128 x 128增加,总体加速比从28.81增加到89.12。为1024 x 1024,同时保持分段性能不变。 (C)2016 Elsevier B.V.保留所有权利。

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