A statistical similarity measure for aggregate crowd dynamics

ACM Trans. Graph.(2012)

引用 157|浏览144
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摘要
We present an information-theoretic method to measure the similarity between a given set of observed, real-world data and visual simulation technique for aggregate crowd motions of a complex system consisting of many individual agents. This metric uses a two-step process to quantify a simulator's ability to reproduce the collective behaviors of the whole system, as observed in the recorded real-world data. First, Bayesian inference is used to estimate the simulation states which best correspond to the observed data, then a maximum likelihood estimator is used to approximate the prediction errors. This process is iterated using the EM-algorithm to produce a robust, statistical estimate of the magnitude of the prediction error as measured by its entropy (smaller is better). This metric serves as a simulator-to-data similarity measurement. We evaluated the metric in terms of robustness to sensor noise, consistency across different datasets and simulation methods, and correlation to perceptual metrics.
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关键词
real-world data,observed data,complex system,visual simulation technique,aggregate crowd dynamic,statistical similarity measure,simulation state,simulation method,metric use,recorded real-world data,prediction error,simulator-to-data similarity measurement,crowd simulation
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