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Past, present, and future trend of GPU computing in deep learning on medical images

机译:在医学图像深度学习中GPU计算的过去,现在和未来趋势

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A Segmentation process is labeling an image or images for obtaining more meaningfull information. On biomedical images, this activity has an important role in helping pathologist for conducting advance analysis. After Graphical Proceessing Unit (GPU) introduced not only for graphical necessary but also for general purpose computing, segmentation process which is computationally expensive can be potentially improved. The good accuracy of detection and segmentation result provides morphological information for the pathologist. Consequently, more approaches were developed to ensure the good performance of detection and segmentation such as deep learning approach. Convolutional Neural Network (CNN) is one of deep learning architecture with complex computation. This paper presents an overview of utilization of CNN as prominent deep learning architecture under GPU platform and propose an approach of using GPU as potential further parallelie techniques in CNN.
机译:分割过程是标记图像或图像以获得更多意义的信息。在生物医学图像上,这种活动在帮助病理学家进行预付分分析方面具有重要作用。在图形化加工单元(GPU)之后不仅用于图形所必需的,而且还用于通用计算,可以潜在地提高计算昂贵的分割过程。检测和分割结果的良好准确性提供了病理学家的形态学信息。因此,开发了更多方法,以确保检测和分割等良好性能,例如深度学习方法。卷积神经网络(CNN)是具有复杂计算的深度学习架构之一。本文概述了CNN利用,作为GPU平台下的突出深度学习架构,并提出了一种使用GPU作为CNN中进一步平行技术的方法。

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