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Computational Feature Analysis of Body Movements Reveals Hierarchical Brain Organization

机译:身体运动的计算特征分析揭示了分层脑组织

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Social species spend considerable time observing the body movements of others to understand their actions, predict their emotions, watch their games, or enjoy their dance movements. Given the important information obtained from body movements, we still know surprisingly little about the details of brain mechanisms underlying movement perception. In this fMRI study, we investigated the relations between movement features obtained from automated computational analyses of video clips and the corresponding brain activity. Our results show that low-level computational features map to specific brain areas related to early visual-and motion-sensitive regions, while mid-level computational features are related to dynamic aspects of posture encoded in occipital-temporal cortex, posterior superior temporal sulcus and superior parietal lobe. Furthermore, behavioral features obtained from subjective ratings correlated with activity in higher action observation regions. Our computational feature-based analysis suggests that the neural mechanism of movement encoding is organized in the brain not so much by semantic categories than by feature statistics of the body movements.
机译:社会物种花费相当长的时间观察他人的身体运动来了解他们的行为,预测他们的情绪,观看他们的游戏,或享受他们的舞蹈运动。鉴于从机身运动中获得的重要信息,我们仍然对脑部机制的细节令人惊讶地了解潜在的运动感知。在这个FMRI研究中,我们调查了从视频剪辑的自动计算分析和相应的大脑活动获得的运动特征之间的关系。我们的研究结果表明,低级计算特征地图到与早期视觉和运动敏感区域相关的特定大脑区域,而中级计算特征与枕部颞芯片,后颞沟和后颞沟的姿势的动态方面有关。高级顶叶。此外,从具有高动作观察区域中的活动相关的主观评级获得的行为特征。我们基于计算的特征的分析表明,通过通过身体运动的特征统计,在大脑中组织了对大脑的神经机制而不是通过身体运动的特征统计。

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