Pavement cracks from UAV imagery-1388
收藏DataCite Commons2024-03-18 更新2024-08-19 收录
下载链接:
https://figshare.com/articles/dataset/Pavement_cracks_from_UAV_imagery-1388/25103138
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资源简介:
A pavement crack image dataset from UAV imagery integrated with <b>GSD</b> was established and has been made publicly available for the research community, serving as a valuable supplement to existing crack databases.A total of 1388 pavement crack images here were collected and labeled, with 304 samples identified as being of the longitudinal crack (<b>LC</b>) type, 303 samples identified as being of the transverse crack (<b>TC</b>) type, 313 samples identified as being of the obliquely oriented crack (<b>OC</b>) type, 368 samples identified as being of the alligator crack (<b>AC</b>) type, and 100 samples being identified as of the no-crack type. To ensure the deep learning-based model’s effectiveness, the datasets were divided into training, validation, and test sets in the ratio of 80%, 10%, and 10%, respectively.Please cited this reference as following if using the data.XinbaoChenX; Chang Liu; Long Chen; Xiaodong Zhu; Yaohui Zhang; Chenxi Wang ; A PavementCrack Detection and Evaluation Framework for a UAV Inspection System Based on Deep Learning,<i>Applied Sciences</i>, 2024, 14(3): 1157.<br>
本研究构建了一套融合地面采样距离(GSD)的无人机影像路面裂缝图像数据集,并已面向科研社群公开共享,作为现有裂缝数据库的重要补充。本次共收集并标注了1388张路面裂缝图像,其中304张为纵向裂缝(Longitudinal Crack,LC)、303张为横向裂缝(Transverse Crack,TC)、313张为斜向裂缝(Obliquely Oriented Crack,OC)、368张为龟裂(Alligator Crack,AC),另有100张为无裂缝样本。为确保基于深度学习的模型有效性,本数据集按照80%、10%、10%的比例划分为训练集、验证集与测试集。若使用本数据集,请按以下格式引用该文献:Xinbao Chen, Chang Liu, Long Chen, Xiaodong Zhu, Yaohui Zhang, Chenxi Wang. 基于深度学习的无人机巡检系统路面裂缝检测与评估框架,Applied Sciences,2024,14(3):1157。
提供机构:
figshare
创建时间:
2024-01-29
搜集汇总
数据集介绍

背景与挑战
背景概述
该数据集包含1388张无人机拍摄的路面裂缝图像,分为五种类型(纵向、横向、斜向、鳄鱼裂缝和无裂缝),适用于深度学习模型训练和验证。数据集已公开,旨在补充现有裂缝数据库,支持路面裂缝检测研究。
以上内容由遇见数据集搜集并总结生成



