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Context-Aware Object Region Proposals for Efficient Vehicle Detection from Traffic Surveillance Videos Using Deep Neural Networks

机译:使用深神经网络从流量监控视频中有效车辆检测的背景感知对象区域提案

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Recently, many methods based on deep neural networks have been developed for object recognition, which dominate various performance competitions on public datasets such as ImageNet and Pascal VOC. Existing methods suffer from high computational complexity and/or insufficient recognition accuracy for practical use. In this paper, we demonstrate that, in specific application domains, such as traffic video surveillance, the priori knowledge or environmental context information can be utilized to dramatically reduce the computational complexity and improve the object detection performance. Specifically, our method models the traffic scene background, using the model as a context to guide the generation of a much smaller number of high quality object region proposals that maintain 100% coverage. We then train a deep convolutional neural network (DCNN) to classify these proposal regions and have achieved 99% accuracy on a large test dataset, which outperforms existing methods DCNN-based methods, such as YOLO.
机译:最近,已经开发了基于深度神经网络的许多方法,用于对象识别,该对象识别是在诸如想象网和Pascal VOC等公共数据集上的各种性能竞争。现有方法具有高计算复杂性和/或识别准确性的高计算复杂性和/或不足的实际使用。在本文中,我们证明,在特定的应用域中,例如交通视频监控,先验知识或环境上下文信息可以利用来显着降低计算复杂性并提高对象检测性能。具体而言,我们的方法模拟了交通场景背景,使用模型作为上下文,以指导生成维持100%覆盖范围的更小数量的高质量对象区域提案。然后,我们训练一个深度卷积神经网络(DCNN)来对这些提案区域进行分类,并且在大型测试数据集中实现了99%的精度,这优于现有的基于DCNN的方法,例如YOLO。

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