首页> 外文会议>Intelligent Robots and Systems, 2001. Proceedings. 2001 IEEE/RSJ International Conference on >Input reduction in human sensation modeling using independent component analysis
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Input reduction in human sensation modeling using independent component analysis

机译:使用独立成分分析的人类感知建模中的输入减少

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We model human sensations in virtual reality applications using cascade neural networks. In the modeling process, the dimension of inputs presented to the humans and the sensation systems may be very high. In this research we propose using the independent component analysis (ICA) to achieve input reduction. We obtain human sensation data from a full-body motion virtual reality interface - "motion-based movie". A fixed-point ICA algorithm is applied to achieve feature extraction and input selection for reducing the dimension of the environmental stimulus data. The fidelity of the sensation models trained using the reduced inputs is verified by the hidden Markov model based similarity measure. The performance of input reduction using ICA is compared with that using the principal component analysis. Experimental results showed that the input selection scheme based on ICA is capable of improving the modeling performance of the computational sensation systems and reducing the input dimension by 60%.
机译:我们使用级联神经网络在虚拟现实应用中模拟人类的感觉。在建模过程中,呈现给人类和感觉系统的输入维度可能非常高。在这项研究中,我们建议使用独立成分分析(ICA)来实现输入减少。我们从全身运动虚拟现实界面-“基于运动的电影”中获得人的感觉数据。应用定点ICA算法来实现特征提取和输入选择,以减小环境刺激数据的维数。使用基于减少的输入的训练的感觉模型的保真度通过基于隐马尔可夫模型的相似性度量进行验证。将使用ICA的输入减少性能与使用主成分分析的性能进行比较。实验结果表明,基于ICA的输入选择方案能够提高计算感觉系统的建模性能,并将输入尺寸减少60%。

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