Neural and Neuromimetic Perception: A Comparative Study of Gender Classification from Human Gait

V. Sarangi, A. Pelah, W. Hahn, Elan Barenholtz
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引用次数: 1

Abstract

Abstract Humans are adept at perceiving biological motion for purposes such as the discrimination of gender. Observers classify the gender of a walker at significantly above chance levels from a point-light distribution of joint trajectories. However, performance drops to chance level or below for vertically inverted stimuli, a phenomenon known as the inversion effect. This lack of robustness may reflect either a generic learning mechanism that has been exposed to insufficient instances of inverted stimuli or the activation of specialized mechanisms that are pre-tuned to upright stimuli. To address this issue, the authors compare the psychophysical performance of humans with the computational performance of neuromimetic machine-learning models in the classification of gender from gait by using the same biological motion stimulus set. Experimental results demonstrate significant similarities, which include those in the predominance of kinematic motion cues over structural cues in classification accuracy. Second, learning is expressed in the presence of the inversion effect in the models as in humans, suggesting that humans may use generic learning systems in the perception of biological motion in this task. Finally, modifications are applied to the model based on human perception, which mitigates the inversion effect and improves performance accuracy. The study proposes a paradigm for the investigation of human gender perception from gait and makes use of perceptual characteristics to develop a robust artificial gait classifier for potential applications such as clinical movement analysis.
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神经感知与神经模拟感知:基于步态的性别分类比较研究
人类善于感知生物运动以达到性别歧视等目的。观察者根据关节轨迹的点光分布对行走者的性别进行分类,其准确率明显高于偶然水平。然而,对于垂直倒置的刺激,表现下降到偶然水平或更低,这种现象被称为倒置效应。这种鲁棒性的缺乏可能反映了一种通用的学习机制,这种机制已经暴露在反向刺激的不足实例中,或者激活了预先调整到直立刺激的专门机制。为了解决这个问题,作者通过使用相同的生物运动刺激集,将人类的心理物理表现与神经模拟机器学习模型在步态性别分类方面的计算表现进行了比较。实验结果显示了显著的相似性,其中包括运动学运动线索在分类精度上优于结构线索。其次,学习在模型中表现为倒置效应,就像在人类中一样,这表明人类可能在这项任务中使用通用学习系统来感知生物运动。最后,基于人的感知对模型进行修正,减轻了反演效应,提高了性能精度。该研究提出了一种研究人类步态性别感知的范式,并利用感知特征开发了一种鲁棒的人工步态分类器,用于临床运动分析等潜在应用。
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