...
首页> 外文期刊>Journal of Computing in Civil Engineering >Determining Ground Elevations Covered by Vegetation on Construction Sites Using Drone-Based Orthoimage and Convolutional Neural Network
【24h】

Determining Ground Elevations Covered by Vegetation on Construction Sites Using Drone-Based Orthoimage and Convolutional Neural Network

机译:使用无人机的矫形器和卷积神经网络确定植被植被覆盖的地面升高

获取原文
获取原文并翻译 | 示例

摘要

Three-dimensional (3D) surveying of a construction site using an image-based method may produce incorrect ground elevation results at vegetation-covered regions, because the light rays are reflected on the surface of vegetation in front of the "truth" ground. This paper presents a convolutional neural network (CNN) method to identify and locate static vegetation using drone-based high-resolution orthoimages. The developed CNN-based image classification models are supplemented with an overlapping disassembling algorithm to generate 8x8-pixel, 16x16-pixel, 32x32-pixel, or 64x64-pixel small-patches as model inputs. The training datasets are 10 pairs of 1,536x1,536-pixel orthoimage and label-image dataset. Experimental results show that cropping a high-resolution image into 9,025 overlapped 32x32-pixel small-patches (with a site size of 17.28x17.28 cm2) for image classification, and assembling the small-patch label-image predictions to a patch-wise label-image prediction, has the average pixel accuracy of 92.6% in identifying objects on the experimental site. In addition, a vegetation-removing algorithm is designed to divide the label-image prediction into 36,864 nonoverlapping 8x8-pixel patches and traverse them in 192 row-loops and 191 column-loops. The testing results show vegetation in label-images are modified with the "truth" ground elevation and verified with two datasets obtained on different dates. In addition, the measured elevation differentials are close to the measured vegetation heights on the experimental site. This research has advanced the drone-based orthoimaging method in construction site surveying, which can automatically identify the static obstacles and determine the ground elevations more accurately. Furthermore, an approach of using a CNN model to segment a construction site has been proven feasible.
机译:使用基于图像的方法的三维(3D)测量施工现场可能会在植被覆盖区域产生不正确的地面升高结果,因为光线被反射在“真理”地面面前的植被表面上。本文介绍了一种卷积神经网络(CNN)方法,用于使用基于无人机的高分辨率正弦贴图来识别和定位静态植被。所开发的基于CNN的图像分类模型补充有重叠的拆卸算法,以产生8x8像素,16x16-像素,32x32 - 像素或64×64像素小贴片作为模型输入。训练数据集是10对1,536x1,536像素OrthoImage和标签图像数据集。实验结果表明,对于图像分类,将高分辨率图像裁剪为9,025个重叠的32x32像素小斑块(具有17.28x17.28cm2的站点大小),并将小贴标签图像预测组装到修补程序标签图像预测,在实验部位上识别对象时平均像素精度为92.6%。此外,植被除植入算法旨在将标签图像预测划分为36,864,并在192行循环和191列循环中遍历它们。测试结果显示标签图像中的植被被修改为“真相”梯度,并用不同日期获得的两个数据集进行了验证。此外,测量的高度差异靠近实验部位上的测量植被高度。该研究在施工现场测量中提出了基于无人机的正射方法,可以自动识别静态障碍物,更准确地确定地面高度。此外,已经证明了使用CNN模型进行施工现场的方法。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号