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Convolutional neural network-based encoding and decoding of visual object recognition in space and time

机译:基于卷积神经网络的空间和时间视觉对象识别的编码和解码

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摘要

Representations learned by deep convolutional neural networks (CNNs) for object recognition are a widely investigated model of the processing hierarchy in the human visual system. Using functional magnetic resonance imaging, CNN representations of visual stimuli have previously been shown to correspond to processing stages in the ventral and dorsal streams of the visual system. Whether this correspondence between models and brain signals also holds for activity acquired a high temporal resolution has been explored less exhaustively. Here, we addressed this question by combining CNN-based encoding models with magnetoencephalography (MEG). Human participants passively viewed 1,000 images of objects while MEG signals were acquired. We modelled their high temporal resolution source-reconstructed cortical activity with CNNs, and observed a feed-forward sweep across the visual hierarchy between 75 and 200 ms after stimulus onset. This spatiotemporal cascade was captured by the network layer representations, where the increasingly abstract stimulus representation in the hierarchical network model was reflected in different parts of the visual cortex, following the visual ventral stream. We further validated the accuracy of our encoding model by decoding stimulus identity in a left-out validation set of viewed objects, achieving state-of-the-art decoding accuracy.
机译:对物体识别的深度卷积神经网络(CNN)学习的表示是人类视觉系统中的处理层级的广泛研究模型。使用功能磁共振成像,先前已经显示了视觉刺激的CNN表示对应于视觉系统的腹侧和背部流中的处理阶段。如果模型和大脑信号之间的这种对应关系也适用于所获得的活动,则略微探讨了高时的分辨率。在这里,我们基于CNN编码型号脑磁图(MEG)相结合解决了这个问题。人类参与者被动地查看了1,000个对象图像,而MEG信号被获取。我们用CNN建模了它们的高时间分辨率重建的皮质活动,并在刺激发作后观察到75和200ms之间的视觉等级之间的前馈扫描。通过网络层表示捕获了这种时空级联,其中,在视觉腹部流之后,分层网络模型中日益抽象的刺激表示在视觉皮层的不同部分中反映。我们进一步通过解码观看对象的左验证集中解码刺激标识来验证了我们的编码模型的准确性,实现了最先进的解码精度。

著录项

  • 来源
    《NeuroImage》 |2018年第1期|共14页
  • 作者单位

    Radboud Univ Nijmegen Donders Inst Brain Cognit &

    Behav Montessorilaan 3 NL-6525 HR Nijmegen;

    Radboud Univ Nijmegen Donders Inst Brain Cognit &

    Behav Montessorilaan 3 NL-6525 HR Nijmegen;

    Radboud Univ Nijmegen Donders Inst Brain Cognit &

    Behav Montessorilaan 3 NL-6525 HR Nijmegen;

    Radboud Univ Nijmegen Donders Inst Brain Cognit &

    Behav Montessorilaan 3 NL-6525 HR Nijmegen;

    Radboud Univ Nijmegen Donders Inst Brain Cognit &

    Behav Montessorilaan 3 NL-6525 HR Nijmegen;

    Radboud Univ Nijmegen Donders Inst Brain Cognit &

    Behav Montessorilaan 3 NL-6525 HR Nijmegen;

    Radboud Univ Nijmegen Donders Inst Brain Cognit &

    Behav Montessorilaan 3 NL-6525 HR Nijmegen;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 诊断学;
  • 关键词

    Visual neuroscience; Deep learning; Encoding; Decoding; Magnetoencephalography;

    机译:视觉神经科学;深入学习;编码;解码;磁性脑图;

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