IEEE Trans Vis Comput Graph. 2017 May;23(5):1454-1464. doi: 10.1109/TVCG.2016.2642963. Epub 2016 Dec 23.
We propose a new semantic-level crowd evaluation metric in this paper. Crowd simulation has been an active and important area for several decades. However, only recently has there been an increased focus on evaluating the fidelity of the results with respect to real-world situations. The focus to date has been on analyzing the properties of low-level features such as pedestrian trajectories, or global features such as crowd densities. We propose the first approach based on finding semantic information represented by latent Path Patterns in both real and simulated data in order to analyze and compare them. Unsupervised clustering by non-parametric Bayesian inference is used to learn the patterns, which themselves provide a rich visualization of the crowd behavior. To this end, we present a new Stochastic Variational Dual Hierarchical Dirichlet Process ( SV-DHDP) model. The fidelity of the patterns is computed with respect to a reference, thus allowing the outputs of different algorithms to be compared with each other and/or with real data accordingly. Detailed evaluations and comparisons with existing metrics show that our method is a good alternative for comparing crowd data at a different level and also works with more types of data, holds fewer assumptions and is more robust to noise.
我们在本文中提出了一种新的语义级别的人群评估指标。人群模拟已经是几十年来一个活跃且重要的领域。然而,直到最近才越来越关注根据实际情况评估结果的逼真度。迄今为止,人们的注意力主要集中在分析低层次特征(如行人轨迹)或全局特征(如人群密度)的属性上。我们提出了第一个基于在真实和模拟数据中寻找潜在路径模式表示的语义信息的方法,以便对其进行分析和比较。非参数贝叶斯推理的无监督聚类用于学习模式,这些模式本身提供了人群行为的丰富可视化。为此,我们提出了一种新的随机变分对偶层次狄利克雷过程(SV-DHDP)模型。根据参考标准计算模式的逼真度,从而可以相互比较不同算法的输出,或者相应地与真实数据进行比较。详细的评估和与现有指标的比较表明,我们的方法是在不同级别比较人群数据的一个很好的选择,也可以处理更多类型的数据,假设更少,对噪声更稳健。