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首页> 外文期刊>Computational Imaging, IEEE Transactions on >Closing the Gap of Simulation to Reality in Electromagnetic Imaging of Brain Strokes via Deep Neural Networks
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Closing the Gap of Simulation to Reality in Electromagnetic Imaging of Brain Strokes via Deep Neural Networks

机译:通过深神经网络关闭脑卒中电磁成像的模拟差距

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摘要

Bringing deep learning techniques to electromagnetic imaging is of interest considering its great success in various fields. Deep neural nets however are known for being data hungry machines, and in many practical cases, such as electromagnetic medical imaging, there is not enough to feed them. Scarcity of data necessitates reliance on simulations to generate a sufficiently large dataset for deep learning to perform any complicated task. Simulations however, can not perfectly represent real environments and therefore, any neural net trained on simulation data will invariably fail when evaluated on real data. This work customizes a deep domain adaptation technique for matching distributions of complex-valued electromagnetic data. We demonstrate the advantage of using complex-valued models over regular ones. An operational neural network trained on simulation data and adapted to practical data to perform brain injury localization is presented.
机译:为电磁成像带来深度学习技术,考虑到各种领域的巨大成功。然而,深度神经网络是令人闻记于数据饥饿的机器,并且在许多实际情况下,例如电磁医学成像,还有足以喂养它们。数据的稀缺性需要依赖模拟,以生成足够大的数据集以进行深度学习以执行任何复杂的任务。然而,模拟,不能完全代表真实环境,因此,在仿真数据上训练的任何神经网络训练都会在实际数据上进行评估时失败。这项工作定制了用于匹配复值电磁数据的匹配分布的深域适配技术。我们展示了在普通的复合型号使用复合型号的优势。介绍了在仿真数据上培训并适应实际数据以进行脑损伤定位的操作神经网络。

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