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Abnormal Prediction of Dense Crowd Videos by a Purpose–Driven Lattice Boltzmann Model

机译:目的驱动的格子Boltzmann模型对密集人群视频的异常预测

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In the field of intelligent crowd video analysis, the prediction of abnormal events in dense crowds is a well-known and challenging problem. By analysing crowd particle collisions and characteristics of individuals in a crowd to follow the general trend of motion, a purpose-driven lattice Boltzmann model (LBM) is proposed. The collision effect in the proposed method is measured according to the variation in crowd particle numbers in the image nodes; characteristics of the crowd following a general trend are incorporated by adjusting the particle directions. The model predicts dense crowd abnormal events in different intervals through iterations of simultaneous streaming and collision steps. Few initial frames of a video are needed to initialize the proposed model and no training procedure is required. Experimental results show that our purpose-driven LBM performs better than most state-of-the-art methods.
机译:在智能人群视频分析领域,预测密集人群中的异常事件是一个众所周知且具有挑战性的问题。通过分析人群粒子碰撞和人群中个体的特征以遵循运动的总体趋势,提出了一种目标驱动的格子玻尔兹曼模型(LBM)。根据图像节点中人群粒子数的变化来测量所提出方法的碰撞效果。通过调整粒子方向,可以遵循总体趋势中的人群特征。该模型通过同时进行流式传输和碰撞步骤的迭代来预测不同间隔中的密集人群异常事件。很少需要视频的初始帧来初始化建议的模型,并且不需要训练过程。实验结果表明,我们目标驱动的LBM的性能优于大多数最新技术。

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