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Detecting stabbing by a deep learning method from surveillance videos

机译:从监视视频中通过深度学习方法检测刺伤

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Stabbing is one of culprits threatening public safety. Once it happens, it will make immeasurable consequences in a short period of time. In order to strengthen the supervision of public safety and prevent the emergence of stabbing, the tool detection technology can play a vital role. The existing methods for tool detection are metal detector and X-ray detector, which are applicable to stations, airports and other specific areas but not feasible in public areas crowds of people. This paper proposes the use of a deep learning method with high precision and speed for tool detection and by comparison finally chooses the YOLOV3 method for tool detection in public areas. To validate the performance of YOLOV3 method, a total of 1,738 images of different tools are acquired by simulating real scenes and the web crawler technology. Meanwhile, the number of samples are amplified by image enhancement techniques, and a datasets of 21,000 images are filtered. To improve tool detection accuracy, this paper proposes a method that combines hand features and tool features into new features. Experiments have shown that the detection accuracy is improved by 2.57 % with these new features.
机译:刺伤是威胁公共安全的罪魁祸首之一。一旦发生这种情况,它将在短时间内产生不可估量的后果。为了加强对公共安全的监督,防止刺伤的出现,工具检测技术可以发挥重要作用。现有的刀具检测方法是金属检测器和X射线检测器,适用于站,机场和其他特定区域,但在公共场所人群中不可行。本文提出使用具有高精度和刀具检测速度的深度学习方法,并通过比较选择在公共区域中的刀具检测yolov3方法。为了验证YOLOV3方法的性能,通过模拟真实场景和Web履带技术来获得总共1,738张不同工具的图像。同时,通过图像增强技术放大样本的数量,并过滤21,000个图像的数据集。为了提高刀具检测准确性,本文提出了一种将手特征和工具特征结合到新功能中的方法。实验表明,通过这些新功能,检测精度提高了2.57%。

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