Besson Patricia, Richiardi Jonas, Bourdin Christophe, Bringoux Lionel, Mestre Daniel R, Vercher Jean-Louis
Institute of Movement Sciences, CNRS & Université de la Méditerranée, Marseille, France.
Biol Cybern. 2010 Sep;103(3):213-26. doi: 10.1007/s00422-010-0392-8. Epub 2010 May 26.
Thanks to their different senses, human observers acquire multiple information coming from their environment. Complex cross-modal interactions occur during this perceptual process. This article proposes a framework to analyze and model these interactions through a rigorous and systematic data-driven process. This requires considering the general relationships between the physical events or factors involved in the process, not only in quantitative terms, but also in term of the influence of one factor on another. We use tools from information theory and probabilistic reasoning to derive relationships between the random variables of interest, where the central notion is that of conditional independence. Using mutual information analysis to guide the model elicitation process, a probabilistic causal model encoded as a Bayesian network is obtained. We exemplify the method by using data collected in an audio-visual localization task for human subjects, and we show that it yields a well-motivated model with good predictive ability. The model elicitation process offers new prospects for the investigation of the cognitive mechanisms of multisensory perception.
由于人类观察者具有不同的感官,他们能够从周围环境中获取多种信息。在这个感知过程中会发生复杂的跨模态交互。本文提出了一个框架,通过严格且系统的数据驱动过程来分析和建模这些交互。这需要考虑该过程中涉及的物理事件或因素之间的一般关系,不仅要从定量角度,还要考虑一个因素对另一个因素的影响。我们使用信息论和概率推理工具来推导感兴趣的随机变量之间的关系,其中核心概念是条件独立性。利用互信息分析来指导模型构建过程,得到了一个编码为贝叶斯网络的概率因果模型。我们通过使用在人类受试者的视听定位任务中收集的数据来举例说明该方法,并表明它产生了一个动机充分且具有良好预测能力的模型。模型构建过程为多感官感知的认知机制研究提供了新的前景。