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On-road vehicle detection with monocular camera for embedded realization: Robust algorithms and evaluations

机译:用于嵌入式实现的单眼相机进行道路车辆检测:稳健的算法和评估

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Vehicle detection is critical operation in automotive active safety systems. Although there are a number of vehicle detection techniques available in literature, computationally efficiency for realization on embedded platforms is not explored and addressed in most existing works. In this paper, we present a computationally efficient vehicle detection algorithm that is particularly designed for architectural translation into efficient embedded hardware. The proposed method uses camera calibration to derive the appropriate window scales that must be used for vehicle detection, resulting in a computational cost reduction of over 10 times. In addition to reduction in sampling windows, the proposed vehicle detection technique uses a novel multi-part based vehicle detection method which detects the vehicles that pose the highest risk to the ego-vehicle. The proposed method is evaluated using different datasets and computational savings are seen in orders of magnitude as compared to conventional sliding window approaches, without compromising on accuracy.
机译:车辆检测是汽车主动安全系统中的关键操作。尽管文献中提供了许多车辆检测技术,但是在大多数现有工作中并未探索和解决在嵌入式平台上实现的计算效率。在本文中,我们提出了一种计算有效的车辆检测算法,该算法专门设计用于将架构转换为有效的嵌入式硬件。所提出的方法使用摄像机校准来导出必须用于车辆检测的合适的窗口比例,从而使计算成本降低了10倍以上。除了减少采样窗口外,提出的车辆检测技术还使用了一种新颖的基于多部分的车辆检测方法,该方法可以检测出对自我车辆构成最高风险的车辆。与传统的滑动窗口方法相比,使用不同的数据集对提出的方法进行了评估,并在数量级上节省了计算量,而没有牺牲准确性。

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