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A Deep Learning-Based Approach for Road Pothole Detection in Timor Leste

机译:基于深度学习的Road Pothole检测方法举行

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This research proposes a low-cost solution for detecting road potholes image by using convolutional neural network (CNN). Our model is trained entirely on the image which collected from several different places and has variation such as in wet, dry and shady conditions. The experiment using the 500 testing images showed that our model can achieve (99.80 %) of Accuracy, Precision (100%), Recall (99.60%), and F-Measure (99.60%) simultaneously.
机译:该研究提出了通过使用卷积神经网络(CNN)来检测道路坑洼图像的低成本解决方案。我们的模型完全培训,从几个不同的地方收集,并且具有诸如湿,干燥和阴暗的条件中的变化。使用500检测图像的实验表明,我们的模型可以同时达到(99.80 %)的精度,精度(100 %),召回(99.60 %)和F-Measure(99.60 %)。

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