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Predicting Pedestrian Counts for Crossing Scenario Based on Fused Infrared-Visual Videos

机译:基于融合红外视觉视频的交叉情景下的行人数量预测

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Estimating the number of pedestrians based upon surveillance videos and images has been a critical task while implementing intelligent signal controls at intersections. However, this has been a difficult task considering the pedestrian waiting area is an outdoor scenario with complex and time-varying surrounding environment. In this study, a method for estimating pedestrian counts based on multisource video data has been proposed. First, the partial least squares regression (PLSR) model is developed to estimate the number of pedestrians from single-source video (either visible light video or infrared video). Meanwhile, the temporal feature of the scenario (daytime or nighttime) is identified based on visible light video. According to the recognized time periods, pedestrian count detection results from the visible light and infrared video data can be obtained with preset corresponding confidence levels. The empirical experiments showed that this fusion method based on environment perception holds the benefits of 24-hour monitoring for outdoor scenarios at the pedestrian waiting area and substantially improved accuracy of pedestrian counting.
机译:在十字路口实施智能信号控制时,根据监视视频和图像估算行人数量一直是一项关键任务。然而,考虑到行人等候区是具有复杂且随时间变化的周围环境的室外场景,这是一项艰巨的任务。在这项研究中,提出了一种基于多源视频数据的行人数估计方法。首先,开发偏最小二乘回归(PLSR)模型以从单一源视频(可见光视频或红外视频)估计行人的数量。同时,基于可见光视频来识别场景的时间特征(白天或夜间)。根据所识别的时间段,可以以预设的相应置信度获得来自可见光和红外视频数据的行人计数检测结果。实验表明,这种基于环境感知的融合方法具有对行人候车区室外场景进行24小时监控的优点,并大大提高了行人计数的准确性。

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