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Biomedical Image Segmentation Using Fully Convolutional Networks on TrueNorth

机译:使用全卷积网络在特鲁噻氏卷积网络的生物医学图像分割

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With the rapid growth of medical and biomedical image data, energy-efficient solutions for analyzing such image data that can be processed fast and accurately on platforms with low power budget are highly desirable. This paper uses segmenting glial cells in brain microscopy images as a case study to demonstrate how to achieve biomedical image segmentation with significant energy saving and minimal comprise in accuracy. Specifically, we design, train, implement, and evaluate Fully Convolutional Networks (FCNs) for biomedical image segmentation on IBM's neurosynaptic DNN processor - TrueNorth (TN). Comparisons in terms of accuracy and energy dissipation of TN with that of a low power NVIDIA TX2 mobile GPU platform have been conducted. Experimental results show that TN can offer at least two orders of magnitude improvement in energy efficiency when compared to TX2 GPU for the same workload.
机译:随着医疗和生物医学图像数据的快速生长,用于分析可以在具有低功率预算的平台上快速准确地处理这种图像数据的节能解决方案是非常理想的。本文使用脑显微镜图像中的胶质细胞作为一种案例研究,以证明如何实现具有显着节能和最小的生物医学图像分割的准确性。具体而言,我们在IBM的神经妇女DNN处理器上设计,列车,实施和评估全卷积网络(FCNS),用于IBM的神经肌腱DNN处理器 - Truenorth(TN)。已经进行了与低功率NVIDIA TX2移动GPU平台的TN精度和能量耗散的比较。实验结果表明,与TX2 GPU相同的工作量相比,TN可以提供至少两个能量效率提高能量效率。

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