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Classification of Paved and Unpaved Road Image Using Convolutional Neural Network for Road Condition Inspection System

机译:基于卷积神经网络的路况检测系统对铺装和未铺装道路图像的分类

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Image processing techniques have been actively used for research on road condition inspection and achieving high detection accuracies. Many studies focus on the detection of cracks and potholes of the road. However, in some least developed countries, there are some distances of roads are still unpaved and it escaped the attention of the researchers. Inspired by penetration and success in applying deep learning technic to computer vision and to any other fields and by the existence of the various type of smartphone devices, we proposed a low - cost method for paved and unpaved road images classification using convolutional neural network (CNN). Our model is trained with 13.186 images and validate with 3.186 images which collected using smartphone device in various conditions of roads such as wet, muddy, dry, dusty and shady conditions and with different types of road surface such as ground, rocks and sands. The experiment using 500 new testing images showed that our model can achieve high Precision (98.0%), Recall (98.4%) and F1 -Score (98.2%) simultaneously.
机译:图像处理技术已经被积极地用于道路状况检查的研究并实现高检测精度。许多研究集中在道路裂缝和坑洼的检测上。但是,在一些最不发达国家中,仍有一些距离的道路尚未铺设,这引起了研究人员的注意。受到将深度学习技术应用于计算机视觉和任何其他领域的渗透和成功的启发,并由于存在各种类型的智能手机设备,我们提出了一种使用卷积神经网络(CNN)进行铺装和未铺装道路图像分类的低成本方法)。我们的模型使用13.186图像进行训练,并使用3.186图像进行验证,这些图像是使用智能手机设备在潮湿,泥泞,干燥,多尘和阴暗的各种道路条件以及不同类型的路面(例如地面,岩石和沙子)下收集的。使用500张新测试图像进​​行的实验表明,我们的模型可以同时实现高精度(98.0%),召回率(98.4%)和F1-Score(98.2%)。

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