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Decoding the Semantic Content of Natural Movies from Human Brain Activity

机译:从人脑活动中解码自然电影的语义内容

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摘要

One crucial test for any quantitative model of the brain is to show that the model can be used to accurately decode information from evoked brain activity. Several recent neuroimaging studies have decoded the structure or semantic content of static visual images from human brain activity. Here we present a decoding algorithm that makes it possible to decode detailed information about the object and action categories present in natural movies from human brain activity signals measured by functional MRI. Decoding is accomplished using a hierarchical logistic regression (HLR) model that is based on labels that were manually assigned from the WordNet semantic taxonomy. This model makes it possible to simultaneously decode information about both specific and general categories, while respecting the relationships between them. Our results show that we can decode the presence of many object and action categories from averaged blood-oxygen level-dependent (BOLD) responses with a high degree of accuracy (area under the ROC curve > 0.9). Furthermore, we used this framework to test whether semantic relationships defined in the WordNet taxonomy are represented the same way in the human brain. This analysis showed that hierarchical relationships between general categories and atypical examples, such as organism and plant, did not seem to be reflected in representations measured by BOLD fMRI.
机译:对任何定量模型的大脑进行的一项关键测试是,证明该模型可用于准确地解码诱发的大脑活动中的信息。最近的一些神经影像学研究已经从人脑活动中解码了静态视觉图像的结构或语义内容。在这里,我们提出了一种解码算法,该解码算法可以根据功能性MRI测量的人脑活动信号对自然电影中存在的对象和动作类别的详细信息进行解码。解码是使用分层逻辑回归(HLR)模型完成的,该模型基于从WordNet语义分类法中手动分配的标签。该模型使得可以同时解码有关特定类别和一般类别的信息,同时尊重它们之间的关系。我们的结果表明,我们可以从平均血氧水平依赖性(BOLD)响应中高度准确地(ROC曲线下的区域> 0.9)解码许多对象和动作类别的存在。此外,我们使用此框架来测试WordNet分类法中定义的语义关系在人脑中是否以相同的方式表示。该分析表明,一般类别与非典型示例(例如生物体和植物)之间的层次关系似乎未反映在通过BOLD fMRI测量的表示中。

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