Center for Computational Neuroscience and Neural Technology, Boston University, Boston, Massachusetts, United States of America.
PLoS One. 2012;7(12):e53456. doi: 10.1371/journal.pone.0053456. Epub 2012 Dec 31.
The analysis of motion crowds is concerned with the detection of potential hazards for individuals of the crowd. Existing methods analyze the statistics of pixel motion to classify non-dangerous or dangerous behavior, to detect outlier motions, or to estimate the mean throughput of people for an image region. We suggest a biologically inspired model for the analysis of motion crowds that extracts motion features indicative for potential dangers in crowd behavior. Our model consists of stages for motion detection, integration, and pattern detection that model functions of the primate primary visual cortex area (V1), the middle temporal area (MT), and the medial superior temporal area (MST), respectively. This model allows for the processing of motion transparency, the appearance of multiple motions in the same visual region, in addition to processing opaque motion. We suggest that motion transparency helps to identify "danger zones" in motion crowds. For instance, motion transparency occurs in small exit passages during evacuation. However, motion transparency occurs also for non-dangerous crowd behavior when people move in opposite directions organized into separate lanes. Our analysis suggests: The combination of motion transparency and a slow motion speed can be used for labeling of candidate regions that contain dangerous behavior. In addition, locally detected decelerations or negative speed gradients of motions are a precursor of danger in crowd behavior as are globally detected motion patterns that show a contraction toward a single point. In sum, motion transparency, image speeds, motion patterns, and speed gradients extracted from visual motion in videos are important features to describe the behavioral state of a motion crowd.
运动人群分析主要关注人群中个体的潜在危险检测。现有的方法分析像素运动的统计信息,以分类非危险或危险行为,检测异常运动,或估计图像区域的人员平均吞吐量。我们建议了一种受生物启发的运动人群分析模型,该模型提取了指示人群行为中潜在危险的运动特征。我们的模型由运动检测、集成和模式检测阶段组成,分别模拟灵长类动物初级视觉皮层区(V1)、中颞区(MT)和内侧上颞区(MST)的功能。该模型允许处理运动透明度,即在同一视觉区域中出现多个运动,除了处理不透明运动之外。我们认为运动透明度有助于识别运动人群中的“危险区域”。例如,在疏散期间,小的出口通道中会出现运动透明度。然而,当人们在相反方向上移动并组织成单独的车道时,即使是在非危险的人群行为中也会出现运动透明度。我们的分析表明:运动透明度与运动速度慢的组合可用于标记包含危险行为的候选区域。此外,局部检测到的运动减速或负速度梯度是人群行为中危险的前兆,就像全局检测到的运动模式一样,它们显示出向单个点收缩的趋势。总之,从视频中的视觉运动中提取的运动透明度、图像速度、运动模式和速度梯度是描述运动人群行为状态的重要特征。