The Representational Organization of Static and Dynamic Visual Features in the Human Cortex.

IF 4 2区 医学 Q1 NEUROSCIENCES
Hamed Karimi, Jianxin Wang, Stefano Anzellotti
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引用次数: 0

Abstract

Visual information consists of static and dynamic properties. How is their representation organized in the visual system? Static information has been associated with ventral temporal regions while dynamic information with lateral and dorsal regions. Investigating the representation of static and dynamic information is complicated by the correlation between static and dynamic information within continuous visual input. Here, we used two-stream deep convolutional neural networks (DCNNs) to separate static and dynamic features in quasi-naturalistic videos and to investigate their neural representations. The first DCNN stream was trained to represent static features by recognizing action labels using individual video frames, and the second DCNN stream was trained to encode dynamic features by recognizing actions from optic flow information that describes changes across different frames. To investigate the representation of these different types of features in the visual system, we used representational similarity analysis to compare the neural network models to the neural responses in different visual pathways of 14 human participants (six females). First, we found that both static and dynamic features are encoded across all visual pathways. Second, we found that distinct visual pathways represent overlapping as well as unique static and dynamic visual information. Finally, multivariate analysis revealed that ventral and dorsal visual pathways share a similar posterior-to-anterior gradient in the representation of static and dynamic visual features.

人类皮层中静态和动态视觉特征的代表性组织。
视觉信息由静态和动态属性组成。它们在视觉系统中的表现是如何组织的?静态信息与腹侧颞区有关,动态信息与外侧和背侧颞区有关。由于连续视觉输入中静态和动态信息之间的相关性,研究静态和动态信息的表示变得复杂。在这里,我们使用双流深度卷积神经网络(DCNNs)来分离准自然主义视频中的静态和动态特征,并研究它们的神经表征。一个DCNN流被训练成通过识别单个视频帧的动作标签来表示静态特征。第二个DCNN流通过识别描述不同帧间变化的光流信息中的动作来训练编码动态特征。为了研究这些不同类型的特征在视觉系统中的表征,我们使用表征相似性分析(RSA)将神经网络模型与14名人类参与者(6名女性)不同视觉通路的神经反应进行了比较。首先,我们发现静态和动态特征在所有视觉通路中都被编码。其次,我们发现不同的视觉路径代表重叠以及独特的静态和动态视觉信息。最后,多变量分析表明,腹侧和背侧视觉通路在静态和动态视觉特征的表征方面具有相似的后向前梯度。人类皮层是如何表现静态和动态的视觉特征的?研究静态和动态信息在现实刺激中的表现是困难的:分离静态和动态特征需要专门设计的人工刺激。我们通过使用神经网络解决了这一挑战,并分别研究了准自然主义视频中静态和动态信息的表示。我们的结果挑战了将静态特征与腹侧视觉通路和动态特征与背侧视觉通路联系起来的普遍观点。我们发现不同的视觉路径表现出独特的以及重叠的静态和动态特征。我们还确定了静态和动态视觉特征的代表性模式的梯度,从后到前区域,跨越腹侧和背侧视觉通路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Neuroscience
Journal of Neuroscience 医学-神经科学
CiteScore
9.30
自引率
3.80%
发文量
1164
审稿时长
12 months
期刊介绍: JNeurosci (ISSN 0270-6474) is an official journal of the Society for Neuroscience. It is published weekly by the Society, fifty weeks a year, one volume a year. JNeurosci publishes papers on a broad range of topics of general interest to those working on the nervous system. Authors now have an Open Choice option for their published articles
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