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基于卷积神经网络从光照场景中恢复路面高度图的新方法。

Novel Methodology to Recover Road Surface Height Maps from Illuminated Scene through Convolutional Neural Networks.

机构信息

Department of Civil and Industrial Engineering (DICI), Engineering School, University of Pisa, Largo Lucio Lazzarino 1, 56126 Pisa, Italy.

Joint Research Unit in Environmental Acoustics (UMRAE), Department of Planning, Mobility and Environment (AME), Université Gustave Eiffel, CEREMA, F-44344 Bouguenais, France.

出版信息

Sensors (Basel). 2022 Sep 1;22(17):6603. doi: 10.3390/s22176603.

Abstract

Road surface properties have a major impact on pavement's life service conditions. Nowadays, contactless techniques are widely used to monitor road surfaces due to their portability and high precision. Among the different possibilities, laser profilometers are widely used, even though they have two major drawbacks: spatial information is missed and the cost of the equipment is considerable. The scope of this work is to show the methodology used to develop a fast and low-cost system using images taken with a commercial camera to recover the height information of the road surface using Convolutional Neural Networks. Hence, the dataset was created ad hoc. Based on photometric theory, a closed black-box with four light sources positioned around the surface sample was built. The surface was provided with markers in order to link the ground truth measurements carried out with a laser profilometer and their corresponding intensity values. The proposed network was trained, validated and tested on the created dataset. Three loss functions where studied. The results showed the Binary Cross Entropy loss to be the most performing and the best overall on the reconstruction task. The methodology described in this study shows the feasibility of a low-cost system using commercial cameras based on Artificial Intelligence.

摘要

路面特性对路面的使用寿命状况有重大影响。如今,由于接触式技术具有便携性和高精度的特点,因此被广泛用于监测路面状况。在不同的可能性中,激光轮廓仪被广泛使用,尽管它们有两个主要缺点:空间信息丢失和设备成本相当高。这项工作的范围是展示使用商业摄像机拍摄图像来开发快速且低成本系统的方法,该系统使用卷积神经网络来恢复路面的高度信息。因此,专门创建了数据集。基于光度学理论,构建了一个带有四个光源的封闭黑盒,这些光源位于表面样本的周围。表面上设有标记,以便将使用激光轮廓仪进行的地面实况测量及其相应的强度值联系起来。在所创建的数据集上对提出的网络进行了训练、验证和测试。研究了三种损失函数。结果表明,在重建任务中,二进制交叉熵损失函数的性能最佳。本研究中描述的方法表明,基于人工智能的使用商业摄像机的低成本系统是可行的。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/11c0/9460673/b27db52fdf2a/sensors-22-06603-g001.jpg

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