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A Comparative Study of Nighttime Object Detection With Datasets From Australia and China

机译:澳大利亚与中国数据集夜间物体检测的比较研究

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Intelligent traffic surveillance (ITS) in nighttime has increasingly become important in advanced-driving-assisted-systems (ADAS). ITS relies on efficient detection of objects and adaptability to changing environments in the nighttime. However, detecting the visual features of the objects in nighttime poses challenge due to insufficient illumination conditions. With the development of deep learning object detectors, higher accuracies have been achieved in object detection from nighttime images. In this paper, we employ convolutional neural network (CNN) object detectors such as Faster R-CNN (with various feature extractors), Feature Pyramid Network, and Single Shot Detector to analyse their performance in terms of speed and accuracy using our datasets for nighttime object detection. We carry out the image quality assessment of our datasets and perform an automatic parameter tuning for re-training the object detectors. Experimental results show that the Faster R-CNN with inception has higher detection performance compared with other CNN based detectors.
机译:夜间智能交通监控(ITS)的先进驾驶辅助系统(ADAS)已日益成为重要的。 ITS依赖于对象的有效检测和适应性,在夜间不断变化的环境。然而,在检测姿态夜间挑战的对象的视觉特征,由于照明条件不充分。深学习对象检测器的发展,更高的准确度已经在物体检测从夜间图像来实现的。在本文中,我们采用卷积神经网络(CNN)的对象检测器,例如更快的R-CNN(带有各种特征提取),特征金字塔网络,和单次检测,分析其在使用我们的夜间数据集的速度和精度方面的性能物体检测。我们开展我们的数据集的图像质量评估和再培训的对象检测器执行自动参数调整。实验结果表明,与其它基于CNN探测器相比,更快的R-CNN与开始具有较高的检测性能。

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