A Pedestrian Counting Scheme for Video Images

C. Cheng, Yi-Fan Wu
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引用次数: 0

Abstract

Pedestrian counting aims to compute the numbers of pedestrians entering and leaving an area of interest based on object detection and tracking techniques. This paper proposes a simple and effective approach of pedestrian counting that can effectively solve the problem of pedestrian occlusion.Firstly, the moving objects are detected by the median filtering and foreground extraction with the improved mixed Gaussian model. And then the HOG (Histogram of oriented gradient) features detection and the SVM (Support vector machine) classification are applied to identify the pedestrians. A pedestrian dataset containing 1500 positive samples, 12000 negative samples, and 420 hard examples, which gave the false discriminant results with the initial classifier, also considered as negative samples to enhance classification capability is employed. In addition, the Kalman filtering with BLOB analysis for dynamic target tracking is chosen to predict pedestrian trajectory.This method greatly reduces the target misjudgment caused by overlapping and completes the two-way counting. Experiments on pedestrian tracking and counting in video images demonstrate promising performance with satisfactory recognition rate and processing time.
一种视频图像行人计数方案
行人计数旨在基于目标检测和跟踪技术计算进出感兴趣区域的行人数量。本文提出了一种简单有效的行人计数方法,可以有效地解决行人遮挡问题。首先,采用改进的混合高斯模型对运动目标进行中值滤波和前景提取;然后采用HOG (Histogram of oriented gradient)特征检测和SVM (Support vector machine)分类对行人进行识别。采用一个包含1500个正样本、12000个负样本和420个硬样本的行人数据集,该数据集对初始分类器给出了错误的判别结果,也被认为是负样本,以增强分类能力。此外,还选择了基于BLOB分析的动态目标跟踪卡尔曼滤波来预测行人轨迹。该方法大大减少了重叠引起的目标误判,完成了双向计数。视频图像中行人跟踪与计数的实验结果表明,该算法具有良好的识别率和处理时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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