Road Surface Classification with Images Captured From Low-cost Camera - Road Traversing Knowledge (RTK) Dataset

Thiago Rateke, K. A. Justen, A. V. Wangenheim
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引用次数: 34

Abstract

The type of road pavement directly influences the way vehicles are driven. It’s common to find papers that deal with path detection but don’t take into account major changes in road surface patterns. The quality of the road surface has a direct impact on the comfort and especially on the safety of road users. In emerging countries it’s common to find unpaved roads or roads with no maintenance. Unpaved or damaged roads also impact in higher fuel costs and vehicle maintenance. This kind of analysis can be useful for both road maintenance departments as well as for autonomous vehicle navigation systems to verify potential critical points. For the experiments accomplishment upon the surface types and quality classification, we present a new dataset, collected with a low-cost camera. This dataset has examples of good and bad asphalt (with potholes and other damages) other types of pavement and also many examples of unpaved roads (with and without potholes). We also provide several frames from our dataset manually sorted in surface types for tests accuracy verification. Our road type and quality classifier was done through a simple Convolutional Neural Network with few steps and presents promising results in different datasets.
低成本相机-道路穿越知识(RTK)数据集图像的路面分类
路面类型直接影响车辆的行驶方式。研究路径检测但不考虑路面模式重大变化的论文很常见。路面质量的好坏直接影响到道路使用者的舒适性,尤其是行车安全。在新兴国家,经常会发现未铺设的道路或没有维修的道路。未铺设或损坏的道路也会增加燃料成本和车辆维护费用。这种分析对道路维护部门和自动驾驶车辆导航系统都很有用,可以验证潜在的临界点。为了完成表面类型和质量分类的实验,我们提出了一个用低成本相机采集的新数据集。这个数据集有好的和坏的沥青(有坑洼和其他损坏)、其他类型的路面以及许多未铺设的道路(有坑洼和没有坑洼)的例子。我们还从我们的数据集中提供了几个帧,手动按表面类型排序,用于测试准确性验证。我们的道路类型和质量分类器是通过一个简单的卷积神经网络完成的,步骤很少,在不同的数据集中呈现出有希望的结果。
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