Glacial cirque identification based on Convolutional Neural Networks

IF 3.1 2区 地球科学 Q2 GEOGRAPHY, PHYSICAL
Dongxue Mao , Yingkui Li , Qiang Liu , Iestyn D. Barr , Ian S. Evans
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引用次数: 0

Abstract

Cirques provide important information about the palaeoclimate conditions that produced past glaciers. However, mapping cirques is challenging, time-consuming, and subjective due to their fuzzy boundaries. A recent study tested the potential of using a deep learning algorithm, Convolutional Neural Networks (CNN), to predict boundary boxes containing cirques. Based on a similar CNN method, RetinaNet, we use a dataset of >8000 cirques worldwide and various combinations of digital elevation models and their derivatives to detect these features. We also incorporate the Convolutional Block Attention Module (CBAM) into RetinaNet for training and prediction. The precision of cirque detection with or without the addition of the CBAM is evaluated for various input data combinations, and training sample sizes, based on comparison with mapped cirques in two test areas on the Kamchatka Peninsula and the Gangdise Mountains. The results show that the addition of CBAM increases the average precision by 4–5 % (p < 0.01), and the trained model can detect the cirque boundary boxes with high precision (84.7 % and 87.0 %), recall (94.7 % and 86.6 %), and F1 score (0.89 and 0.87), for the two test areas, respectively. The inclusion of CBAM also significantly reduces the number of undetected cirques. The model performance is affected by the quantity and quality of the training samples: the performance generally increases with increasing training samples and a training dataset of 6000 cirques produces the best results. This trained model can effectively detect boundary boxes that contain cirques to help facilitate subsequent cirque outline extraction and morphological analysis.
基于卷积神经网络的冰川峡谷识别技术
岩圈提供了有关过去冰川形成的古气候条件的重要信息。然而,绘制冰川圆环具有挑战性、耗时,而且由于其边界模糊而具有主观性。最近的一项研究测试了使用深度学习算法--卷积神经网络(CNN)--预测包含海圈的边界框的潜力。基于类似的 CNN 方法 RetinaNet,我们使用全球 8000 个海蚀圈数据集和数字高程模型及其衍生物的各种组合来检测这些特征。我们还在 RetinaNet 中加入了卷积块注意力模块(CBAM),用于训练和预测。通过与堪察加半岛和冈底斯山脉两个测试区域的绘制地图上的盘旋地貌进行比较,评估了在不同输入数据组合和训练样本大小的情况下,是否添加了 CBAM 的盘旋地貌检测精度。结果表明,加入 CBAM 后,平均精度提高了 4-5 %(p <0.01),在两个测试区域,训练后的模型可以分别以较高的精度(84.7 % 和 87.0 %)、召回率(94.7 % 和 86.6 %)和 F1 分数(0.89 和 0.87)检测到盘旋边界框。CBAM 的加入还大大减少了未检测到的圈层数量。模型的性能受训练样本数量和质量的影响:性能通常随着训练样本的增加而提高,6000 个圆圈的训练数据集产生的结果最好。这种训练有素的模型可以有效地检测出包含圆环的边界框,从而有助于后续的圆环轮廓提取和形态分析。
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来源期刊
Geomorphology
Geomorphology 地学-地球科学综合
CiteScore
8.00
自引率
10.30%
发文量
309
审稿时长
3.4 months
期刊介绍: Our journal''s scope includes geomorphic themes of: tectonics and regional structure; glacial processes and landforms; fluvial sequences, Quaternary environmental change and dating; fluvial processes and landforms; mass movement, slopes and periglacial processes; hillslopes and soil erosion; weathering, karst and soils; aeolian processes and landforms, coastal dunes and arid environments; coastal and marine processes, estuaries and lakes; modelling, theoretical and quantitative geomorphology; DEM, GIS and remote sensing methods and applications; hazards, applied and planetary geomorphology; and volcanics.
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