在水下图像上使用深度学习的自动河床成分分析

IF 2.8 2区 地球科学 Q2 GEOGRAPHY, PHYSICAL
Alexander A. Ermilov, Gergely Benkő, Sándor Baranya
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引用次数: 0

摘要

摘要冲积河床泥沙在水系的工程和自然过程中都起着重要的作用。然而,即使在河段尺度上,沉积物组成也会表现出高度的时空异质性,这使得代表性采样和评估变得困难。在这些情况下,传统的采样方法不足以有效地捕捉床表面纹理的变化,而且耗时。在本研究中,我们通过采用基于图像的深度学习(DL)算法来克服这个问题。经过训练,该算法可以识别多瑙河水下横截面拍摄的视频中的主要沉积物类别。共采集27个河床样本进行分析验证。引入的基于dl的方法速度快,即300-400 m长段的视频可以在几分钟内分析出来,并且具有连续的空间采样分布(即沿路径的整个河床以大约0.3-1 m2的重叠窗口绘制图像)。对训练算法的质量进行了评估(i)通过将注释图像划分为测试和验证集,并通过(ii)与其他直接(物理样本筛选)和间接采样方法(基于小波的河床图像处理)进行比较,重点是检测到的沉积物组分的百分比。对于最终的评价,所收集的物理样品的筛分分析被认为是真实的。在校正了受床装甲影响的样本后,DL方法与14个物理样本的比较产生了4.5%的平均分类误差。此外,基于对镜头的视觉评价,分数变化的空间趋势也沿着截面被很好地捕捉到。还提出了进行适当的实地测量的建议;此外,强调了将该算法与其他技术相结合的可能性,简要展示了水下视频用于水文形态评估的多用途性质。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated riverbed composition analysis using deep learning on underwater images
Abstract. The sediment of alluvial riverbeds plays a significant role in river systems both in engineering and natural processes. However, the sediment composition can show high spatial and temporal heterogeneity, even on river-reach scale, making it difficult to representatively sample and assess. Conventional sampling methods are inadequate and time-consuming for effectively capturing the variability of bed surface texture in these situations. In this study, we overcome this issue by adopting an image-based deep-learning (DL) algorithm. The algorithm was trained to recognise the main sediment classes in videos that were taken along cross sections underwater in the Danube. A total of 27 riverbed samples were collected and analysed for validation. The introduced DL-based method is fast, i.e. the videos of 300–400 m long sections can be analysed within minutes with continuous spatial sampling distribution (i.e. the whole riverbed along the path is mapped with images in ca. 0.3–1 m2 overlapping windows). The quality of the trained algorithm was evaluated (i) mathematically by dividing the annotated images into test and validation sets and also via (ii) intercomparison with other direct (sieving of physical samples) and indirect sampling methods (wavelet-based image processing of the riverbed images), focusing on the percentages of the detected sediment fractions. For the final evaluation, the sieving analysis of the collected physical samples were considered the ground truth. After correcting for samples affected by bed armouring, comparison of the DL approach with 14 physical samples yielded a mean classification error of 4.5 %. In addition, based upon the visual evaluation of the footage, the spatial trend in the fraction changes was also well captured along the cross sections. Suggestions for performing proper field measurements are also given; furthermore, possibilities for combining the algorithm with other techniques are highlighted, briefly showcasing the multi-purpose nature of underwater videos for hydromorphological assessment.
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来源期刊
Earth Surface Dynamics
Earth Surface Dynamics GEOGRAPHY, PHYSICALGEOSCIENCES, MULTIDISCI-GEOSCIENCES, MULTIDISCIPLINARY
CiteScore
5.40
自引率
5.90%
发文量
56
审稿时长
20 weeks
期刊介绍: Earth Surface Dynamics (ESurf) is an international scientific journal dedicated to the publication and discussion of high-quality research on the physical, chemical, and biological processes shaping Earth''s surface and their interactions on all scales.
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