Person Head Detection Based Deep Model for People Counting in Sports Videos

Sultan Daud Khan, H. Ullah, M. Ullah, N. Conci, F. A. Cheikh, Azeddine Beghdadi
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引用次数: 21

Abstract

People counting in sports venues is emerging as a new domain in the field of video surveillance. People counting in these venues faces many key challenges, such as severe occlusions, few pixels per head, and significant variations in person's head sizes due to wide sport areas. We propose a deep model based method, which works as a head detector and takes into consideration the scale variations of heads in videos. Our method is based on the notion that head is the most visible part in the sports venues where large number of people are gathered. To cope with the problem of different scales, we generate scale aware head proposals based on scale map. Scale aware proposals are then fed to the Convolutional Neural Network (CNN) and it provides a response matrix containing the presence probabilities of people observed across scene scales. We then use non-maximal suppression to get the accurate head positions. For the performance evaluation, we carry out extensive experiments on two standard datasets and compare the results with state-of-the-art (SoA) methods. The results in terms of Average Precision (AvP), Average Recall (AvR), and Average F1-Score (AvF-Score) show that our method is better than SoA methods.
基于人头检测的体育视频人数统计深度模型
体育场馆人数统计是视频监控领域的一个新领域。在这些场地进行计数的人面临着许多关键挑战,例如严重的闭塞,人均像素很少,以及由于宽阔的运动区域而导致的人的头部大小的显着变化。我们提出了一种基于深度模型的方法,该方法可以作为头部检测器,并考虑视频中头部的尺度变化。我们的方法是基于这样一个概念,即在聚集了大量人群的体育场馆中,头部是最明显的部分。为了解决不同比例尺的问题,我们在比例尺地图的基础上生成了比例尺感知头方案。然后将尺度感知建议馈送到卷积神经网络(CNN),它提供一个响应矩阵,其中包含在场景尺度上观察到的人的存在概率。然后我们使用非最大抑制来获得准确的头部位置。为了进行性能评估,我们在两个标准数据集上进行了广泛的实验,并将结果与最先进的(SoA)方法进行了比较。在平均精度(AvP)、平均召回率(AvR)和平均F1-Score (AvF-Score)方面的结果表明,我们的方法优于SoA方法。
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