Different Goal-driven CNNs Affect Performance of Visual Encoding Models based on Deep Learning

Ziya Yu, Chi Zhang, Linyuan Wang, Li Tong, Bin Yan
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Abstract

A convolutional neural network with outstanding performance in computer vision can be used to construct an encoding model that simulates the process of human visual information processing. However, training goal of the network may have impacted the performance of encoding model. Most neural networks used to establish encoding models in the past were performed image classification task, the task of which is single. While in the process of human's visual perception, multiple tasks are performed simultaneously. Thus, the existing encoding model does not well satisfy the diversity and complexity of the human visual mechanism. In this paper, we first established a feature extraction model based on Fully Convolutional Network (FCN) and Visual Geometry Group (VGG) with similar network structure but different training goal, and employed Regularize Orthogonal Matching Pursuit (ROMP) to establish the response model, which can predict the stimuli-evoked responses measured by functional magnetic resonance imaging (fMRI). The results revealed that the convolutional neural networks trained by different visual tasks had significant difference in the performance of visual encoding with almost the same network structure. The VGG-based encoding model can achieve a higher performance in most voxels of ROIs. We concluded that classification task in computer vision can better fit the visual mechanism of human compared to visual segmentation task.
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不同目标驱动cnn对基于深度学习的视觉编码模型性能的影响
卷积神经网络在计算机视觉领域具有优异的性能,可以用来构建模拟人类视觉信息处理过程的编码模型。然而,网络的训练目标可能会影响编码模型的性能。以往用于建立编码模型的神经网络多用于图像分类,分类任务单一。而在人的视觉感知过程中,多重任务同时进行。因此,现有的编码模型不能很好地满足人类视觉机制的多样性和复杂性。本文首先建立了基于网络结构相似但训练目标不同的全卷积网络(FCN)和视觉几何组(VGG)的特征提取模型,并采用正则化正交匹配追踪(ROMP)建立响应模型,该模型可以预测功能磁共振成像(fMRI)测量的刺激诱发反应。结果表明,在几乎相同的网络结构下,不同视觉任务训练的卷积神经网络在视觉编码性能上存在显著差异。基于vgg的编码模型可以在roi的大多数体素上实现更高的性能。结果表明,与视觉分割任务相比,计算机视觉中的分类任务更符合人类的视觉机制。
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