基于dmfg对抗网络重构图像的人脑功能区分析

Renzhou Gui, Aobo Zhang, Shuai Liu, M. Tong
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引用次数: 0

摘要

人脑结构复杂,功能磁共振成像数据可以揭示人脑的工作机制。我们构建了一个基于dmfg损失函数的生成对抗深度学习网络。利用该网络不仅可以高精度地重建人脑感知和想象的简单场景图像,而且对于复杂的自然图像的恢复和重建也取得了很好的效果。此外,我们提出了基于恒虚警算法设置检测阈值的方法。进一步,我们探索了大脑敏感区域的分布,深入分析了不同区域对图像重建的影响。给出了特定脑区对人脑图像重建的贡献率。这将有助于探索人类大脑的未知领域,揭示人类大脑的运作机制。它在脑机交互和人脑解码方面有着广阔的应用前景。
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Analysis of Functional Areas of Human Brain Based on Reconstructed Images of DMFG-generated Countermeasure Network
The structure of human brain is complex, and fMRI data can be used to reveal the working mechanism of human brain. We construct a generative confrontation deep learning network based on DMFG-loss function. Using this network, we can not only reconstruct the simple scene images perceived and imagined by human brain with high precision, but also achieve good results for the restoration and reconstruction of complex natural images. In addition, we propose to set the detection threshold based on the constant false alarm algorithm. Further, we explore the distribution of brain sensitive areas, and make a deep analysis of the impact of different regions on image reconstruction. The contribution ratio of specific brain regions to the image reconstruction of human brain is gived. This will help to explore the unknown areas of human brain and reveal the mechanism of human brain operation. It has broad application prospects in brain computer interaction and human brain decoding.
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