Improvement in detection of abandoned object by pan-tilt camera

Takuma Ogawa, Daiki Hiraoka, S. Ito, Momoyo Ito, M. Fukumi
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引用次数: 3

Abstract

Recently, security cameras have been installed at a high rate in places where there are extensive grounds and many humans gather. The number of installed security cameras has been increasing year by year. The main reason is security enhancement including the prevention of incidences of terrorism. Therefore, we propose a method which detects abandoned objects on online by using pan-tilt camera. Above all, we improve problems of the previous method which is based on ST-Patch features and human detection. We make extended ST-Patch features for solving the problem of ST-Patch features. We improve human detection by using deep learning which is based on a convolutional neural network. We conducted preliminary experiments to verify a method of pooling, and then we decided to use Max pooling because its detection accuracy is better than that of Ave pooling. We conducted experiments in five situations to verify usefulness of the proposed method. If the proposed method finds an abandoned object, it saves the object image. We define the abandoned object as an object which human does not subsist near. We could detect the abandoned object in each situation. However, we conducted experiments of the proposed method only in a room. We need to conduct experiments in a wide area to find new problem.
平移倾斜相机对废弃物体检测的改进
最近,在宽阔的场地和人群聚集的地方,安全摄像头的安装率很高。安全摄像头的安装数量逐年增加。主要原因是加强安全,包括防止恐怖主义事件的发生。因此,我们提出了一种利用平移相机在线检测废弃物体的方法。首先,我们改进了之前基于ST-Patch特征和人工检测的方法存在的问题。为了解决ST-Patch特征的问题,我们制作了扩展的ST-Patch特征。我们通过使用基于卷积神经网络的深度学习来改进人类检测。我们对池化的一种方法进行了初步的实验验证,由于Max池化的检测精度优于Ave池化,所以我们决定使用Max池化。我们在五种情况下进行了实验,以验证所提出方法的有效性。如果所提出的方法找到一个废弃的对象,它将保存对象图像。我们把被遗弃的物体定义为人类无法在其附近生存的物体。我们可以在每种情况下检测到被遗弃的物体。然而,我们只在一个房间里对提出的方法进行了实验。我们需要在广阔的领域进行实验,以发现新的问题。
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