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WatchNet: Efficient and Depth-based Network for People Detection in Video Surveillance Systems

机译:待管网络:视频监控系统中的人们检测的高效和深度网络

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We propose a deep-learning approach for people detection on depth imagery. The approach is designed to be deployed as an autonomous appliance for identifying people attacks and intrusion in video surveillance scenarios. To this end, we propose a fully-convolutional and sequential network, named WatchNet, that localizes people in depth images by predicting human body landmarks such as head and shoulders. We use a large synthetic dataset to train the network with abundant data and generate automatic annotations. Adaptation to real data is performed via fine tuning with real depth images.The proposed method is validated in a novel and challenging database with about 29k top view images collected from several sequences including different people assaults. A comparative evaluation is given between our approach and other standard methods, showing remarkable detection results and efficiency. The network runs in 10 and 28 FPS using CPU and GPU, respectively.
机译:我们为深度图像的人们提出了一种深入的学习方法。该方法旨在部署为自治设备,用于识别人们的攻击和视频监控情景中的入侵。为此,我们提出了一个完全卷积的和顺序网络,名为TANKNET,通过预测人体地标如头部和肩部,本地化了深度图像的人。我们使用大型合成数据集以具有丰富的数据培训网络并生成自动注释。通过使用实际深度图像进行微调来执行对实际数据的适应性。建议的方法在一个小说和具有挑战性的数据库中验证,其中大约29k顶视图图像从包括不同人攻击的若干序列收集。在我们的方法和其他标准方法之间给出了比较评估,显示出显着的检测结果和效率。网络使用CPU和GPU分别在10和28 FPS中运行。

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