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Vehicle detector training with labels derived from background subtraction algorithms in video surveillance

机译:车辆探测器训练,标签源自视频监控中的背景减法算法

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Vehicle detection in video from a miniature stationary closed-circuit television (CCTV) camera is discussed in the paper. The camera provides one of components of the intelligent road sign developed in the project concerning the traffic control with the use of autonomous devices being developed. Modern Convolutional Neural Network (CNN) based detectors need big data input, usually demanding their manual labeling. In the presented research approach the weakly-supervised learning paradigm is used for the training of a CNN based detector employing labels obtained automatically through an application of video background subtraction algorithm. The proposed method is evaluated on GRAM-RTM dataset and a CNN fine-tuned with labels from the background subtraction algorithm. Even though obtained representation in the form of labels may include many false positives and negatives, a reliable vehicle detector was trained employing them. The results are presented showing that such a method can be applied to traffic surveillance systems.
机译:从微型固定式闭路电视(CCTV)相机中讨论了视频中的视频中的视频。该相机提供了在项目中开发的智能路标的组件之一,该组件是通过使用自主设备进行的流量控制。基于现代卷积神经网络(CNN)的探测器需要大数据输入,通常要求他们的手动标签。在所提出的研究方法中,弱监督的学习范式用于训练通过应用视频背景减法算法自动获得的基于CNN的检测器。所提出的方法在克RTM数据集和来自背景减法算法的标签上进行微调的CNN评估。尽管以标签形式获得的表示可能包括许多假阳性和否定,但可靠的车辆检测器采用它们训练。提出了结果,表明这种方法可以应用于交通监控系统。

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