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On-Road Vehicle Detection under Varying Lighting Conditions

机译:在不同的照明条件下的道路车辆检测

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On-road vehicle detection round the clock is important for driver assistance systems and autonomous driving. However, varying lighting conditions is a big challenge for outdoor scenarios. In this paper, a robust vehicle detection system under various lighting conditions is developed: First, different CNN(Convolutional Neural Network) models are adopted for different illuminations and they are merged into a single network to save the computational resources. Second, a target-oriented scene classification module is proposed to co-adapt scene classifiers with vehicle detectors. The scene classifier is explicitly optimized towards a better detection performance. Experimental results based on a database with varying lighting conditions show the potential of the developed method. The developed framework can also be easily extended to other weather conditions, such as rainy, snowy, foggy days, and so on.
机译:圆形车辆检测时钟对于驾驶员辅助系统和自主驾驶非常重要。然而,不同的照明条件是户外情景的重要挑战。在本文中,开发了一种鲁棒的车辆检测系统,开发了各种照明条件:首先,采用不同的CNN(卷积神经网络)模型来用于不同的照明,并且它们被合并到单个网络中以节省计算资源。其次,建议以目标为导向的场景分类模块与车辆检测器共同适应场景分类器。朝向更好的检测性能明确优化场景分类器。基于具有不同照明条件的数据库的实验结果表明了开发方法的潜力。发达的框架也可以很容易地扩展到其他天气条件,如多雨,雪,雾,依此类推。

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