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Deep Learning-Based Person Detection and Classification for Far Field Video Surveillance

机译:基于深度学习的人员检测和远场视频监控分类

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This paper presents a deep learning-based approach to detect and classify persons in video data captured from distances of several miles via a high-power lens video camera. For detection, a set of computationally efficient image processing steps are considered to identify moving areas that contain a person. These areas are then passed onto a convolutional neural network classifier whose convolutional layers consist of the GoogleNet transfer learning. Despite the challenges associated with the video dataset examined in terms of the low resolution of persons appearing in the video data and the presence of heat haze and camera shaking, the developed approach generated 90% classification accuracy.
机译:本文提出了一种基于深度学习的方法,该方法可以通过大功率镜头视频摄像机对从几英里远处捕获的视频数据中的人进行检测和分类。为了进行检测,考虑了一组计算有效的图像处理步骤以识别包含人的运动区域。然后将这些区域传递到卷积神经网络分类器,其卷积层由GoogleNet转移学习组成。尽管就视频数据中出现的人的低分辨率以及是否出现热雾和相机抖动而言,与检查的视频数据集相关联的挑战仍然存在,但已开发的方法产生了90%的分类精度。

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