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Decoding natural scenes based on sounds of objects within scenes using multivariate pattern analysis

机译:根据使用多变量模式分析的场景中的对象的声音解码自然场景

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Scene recognition plays an important role in spatial navigation and scene classification. It remains unknown whether the occipitotemporal cortex could represent the semantic association between the scenes and sounds of objects within the scenes. In this study, we used the functional magnetic resonance imaging (fMRI) technique and multivariate pattern analysis to assess whether different scenes could be discriminated based on the patterns evoked by sounds of objects within the scenes. We found that patterns evoked by scenes could be predicted with patterns evoked by sounds of objects within the scenes in the posterior fusiform area (pF), lateral occipital area (LO) and superior temporal sulcus (STS). The further functional connectivity analysis suggested significant correlations between pF, LO and parahippocampal place area (PPA) except that between STS and other three regions under the scene and sound conditions. A distinct network in processing scenes and sounds was discovered using a seed-to-voxel analysis with STS as the seed. This study may provide a cross-modal channel of scene decoding through the sounds of objects within the scenes in the occipitotemporal cortex, which could complement the single-modal channel of scene decoding based on the global scene properties or objects within the scenes. (C) 2018 Elsevier B.V. and Japan Neuroscience Society. All rights reserved.
机译:场景识别在空间导航和场景分类中起着重要作用。它仍然未知枕颞皮质是否可以代表场景中对象的场景和声音之间的语义关联。在本研究中,我们使用了功能磁共振成像(FMRI)技术和多变量模式分析,以评估是否可以基于场景中的物体声音引起的模式来歧视不同场景。我们发现场景中唤起的图案可以预测,在后部梭形区域(PF),侧侧枕部(LO)和优越的时间沟(STS)中的场景中的物体内的声音引起的图案。除了在场景和声音条件下的STS和其他三个区域之间,进一步的功能性连接分析表明PF,LO和PARAHIPPOPAPAL PLACE区域(PPA)之间的显着相关性。使用与STS作为种子的种子对体素分析发现处理场景和声音中的不同网络。本研究可以通过摩托车皮层中的场景中的场景内的对象的声音提供跨模型通道,这可以基于场景中的全局场景属性或对象来补充场景解码的单模解码的单模频道。 (c)2018年Elsevier B.V.和日本神经科学社会。版权所有。

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