基于高分辨率dem衍生地貌信息的深度学习分类研究。

IF 3 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Frontiers in Artificial Intelligence Pub Date : 2025-05-13 eCollection Date: 2025-01-01 DOI:10.3389/frai.2025.1561281
Michael Edidem, Bill Xu, Ruopu Li, Di Wu, Banafsheh Rekabdar, Guangxing Wang
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引用次数: 0

摘要

来自激光雷达和InSAR技术的高分辨率数字高程模型(hrdem)显著提高了绘制河流边界、流线和大面积水体等水文特征的精度。然而,有利于道路下方排水通道的排水道口通常没有在hrdem中表示,从而导致水文特征不稳定或扭曲。目前,排水交叉数据集大多缺失或可用,质量参差不齐。虽然之前的研究已经研究了用于排水交叉表征的基本卷积神经网络(CNN)模型,但尚不清楚先进的深度学习模型是否会提高排水交叉分类的准确性。虽然已经确定了hrdem衍生的地貌特征,以增强其他水文应用中的特征提取,但这些特征对排水交叉图像分类的贡献尚未得到充分研究。该研究开发了先进的CNN模型EfficientNetV2,使用来自hrdem的四个共注册的1米分辨率地貌数据层进行排水交叉分类。这些层包括正开放性(POS)、几何曲率和两个地形位置指数(TPI)层,利用3 × 3和21 × 21单元窗。结果表明,采用HRDEM、TPI (21 × 21)和HRDEM、POS和TPI (21 × 21)的高级CNN模型与基线模型相比,分类准确率分别提高了3.39%、4.27%和4.93%。这项研究的最终成果是可解释的人工智能(XAI),用于评估那些负责描绘排水道口特征的最关键图像片段。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning classification of drainage crossings based on high-resolution DEM-derived geomorphological information.

High-resolution digital elevation models (HRDEMs) from LiDAR and InSAR technologies have significantly improved the accuracies of mapping hydrographic features such as river boundaries, streamlines, and waterbodies over large areas. However, drainage crossings that facilitate the passage of drainage flows beneath roads are not often represented in HRDEMs, resulting in erratic or distorted hydrographic features. At present, drainage crossing datasets are largely missing or available with variable quality. While previous studies have investigated basic convolutional neural network (CNN) models for drainage crossing characterization, it remains unclear if advanced deep learning models will improve the accuracy of drainage crossing classification. Although HRDEM-derived geomorphological features have been identified to enhance feature extraction in other hydrography applications, the contributions of these features to drainage crossing image classification have yet to be sufficiently investigated. This study develops advanced CNN models, EfficientNetV2, using four co-registered 1-meter resolution geomorphological data layers derived from HRDEMs for drainage crossing classification. These layers include positive openness (POS), geometric curvature, and two topographic position index (TPI) layers utilizing 3 × 3 and 21 × 21 cell windows. The findings reveal that the advanced CNN models with HRDEM, TPI (21 × 21), and a combination of HRDEM, POS, and TPI (21 × 21) improve classification accuracy in comparison to the baseline model by 3.39, 4.27, and 4.93%, respectively. The study culminates in explainable artificial intelligence (XAI) for evaluating those most critical image segments responsible for characterizing drainage crossings.

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来源期刊
CiteScore
6.10
自引率
2.50%
发文量
272
审稿时长
13 weeks
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