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CNN-Based Person Detection Using Infrared Images for Night-Time Intrusion Warning Systems

机译:夜间入侵预警系统基于CNN的红外图像人检测

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摘要

Night-time surveillance is important for safety and security purposes. For this reason, several studies have attempted to automatically detect people intruding into restricted areas by using infrared cameras. However, detecting people from infrared CCTV (closed-circuit television) is challenging because they are usually installed in overhead locations and people only occupy small regions in the resulting image. Therefore, this study proposes an accurate and efficient method for detecting people in infrared CCTV images during the night-time. For this purpose, three different infrared image datasets were constructed; two obtained from an infrared CCTV installed on a public beach and another obtained from a forward looking infrared (FLIR) camera installed on a pedestrian bridge. Moreover, a convolution neural network (CNN)-based pixel-wise classifier for fine-grained person detection was implemented. The detection performance of the proposed method was compared against five conventional detection methods. The results demonstrate that the proposed CNN-based human detection approach outperforms conventional detection approaches in all datasets. Especially, the proposed method maintained F1 scores of above 80% in object-level detection for all datasets. By improving the performance of human detection from infrared images, we expect that this research will contribute to the safety and security of public areas during night-time.
机译:夜间监视对于安全性和安全性很重要。因此,一些研究试图通过使用红外热像仪自动检测闯入禁区的人员。但是,从红外闭路电视(闭路电视)中检测人身具有挑战性,因为他们通常安装在头顶位置,并且人只在结果图像中占据很小的区域。因此,本研究提出了一种在夜间检测红外闭路电视图像中人物的准确有效的方法。为此,构建了三个不同的红外图像数据集。其中两个来自安装在公共海滩上的红外闭路电视,另一个来自安装在人行天桥上的前视红外(FLIR)摄像机。此外,实现了基于卷积神经网络(CNN)的像素级分类器,用于细粒度的人检测。将该方法的检测性能与五种常规检测方法进行了比较。结果表明,所提出的基于CNN的人类检测方法在所有数据集中均优于常规检测方法。特别是,该方法在所有数据集的对象级检测中均保持F1分数高于80%。通过改善从红外图像进行人体检测的性能,我们希望这项研究将有助于夜间公共区域的安全性。

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