This paper summarizes the design, experiments and results of our solution to the Road Damage Detection and Classification Challenge held as part of the 2018 IEEE International Conference On Big Data Cup. Automatic detection and classification of damage in roads is an essential problem for multiple applications like maintenance and autonomous driving. We demonstrate that convolutional neural net based instance detection and classfication approaches can be used to solve this problem. In particular we show that Mask-RCNN, one of the state-of-the-art algorithms for object detection, localization and instance segmentation of natural images, can be used to perform this task in a fast manner with effective results. We achieve a mean F1 score of 0.528 at an IoU of 50% on the task of detection and classification of different types of damages in real-world road images acquired using a smartphone camera and our average inference time for each image is 0.105 seconds on an NVIDIA GeForce 1080Ti graphic card. The code and saved models for our approach can be found here : https://github.com/sshkhr/BigDataCup18 Submission
翻译:本文总结了我们作为2018年国际EEEE大数据杯国际会议一部分而举行的道路损坏探测和分类挑战解决方案的设计、实验和结果。对道路损坏的自动检测和分类是维修和自主驾驶等多种应用的基本问题。我们证明,可以利用基于神经网络的革命性神经网络实例检测和分类方法解决这一问题。我们特别显示,用于天体探测、定位和自然图像实例分解的最先进的算法之一Mask-RCNN可用于快速完成这项任务,并取得有效结果。我们通过智能手机相机获取的实时道路图像中不同类型损坏的检测和分类任务平均为50%的IoUF1分为0.528分,每个图像的平均回推时间为NVDIAA GeForce 1080Ti图形卡0.105秒。我们方法的代码和保存模型可以在这里找到:https://github.com/sshkhr/BigDataCuple18。