Potential of synthetic images in landslide segmentation in data-poor scenario: a framework combining GAN and transformer models

IF 5.8 2区 工程技术 Q1 ENGINEERING, GEOLOGICAL
Xiao Feng, Juan Du, Minghua Wu, Bo Chai, Fasheng Miao, Yang Wang
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引用次数: 0

Abstract

Accurate landslide segmentation from remote sensing data is pivotal for efficient emergency response and risk management. In recent years, data-driven deep learning approaches have emerged as a significant area of focus in this domain. However, the limited availability of landslide data often restricts the effectiveness of these approaches. This study introduces the StyleGAN2-transformer framework for landslide segmentation, utilizing generative adversarial networks (GANs) for the first time to create synthetic, high-quality landslide images to address the data scarcity issue that undermines landslide segmentation model performance. Two datasets were developed: one containing a limited set of real landslide images and the other supplemented with synthetic landslide images generated by StyleGAN2. These datasets facilitated comparative experiments to quantitatively assess the impact of synthetic data on the performance of both convolutional neural network (CNN) and transformer series models, employing a suite of metrics for thorough evaluation. The findings indicate that adding synthetic landslide images from StyleGAN2 improves the overall accuracy of most landslide segmentation models significantly, achieving more than a 10% increase. Moreover, integrating StyleGAN2 with transformer models presents an optimized approach, as transformer models surpass CNN models in accuracy when adequate training data are available. Finally, the results also confirm that the StyleGAN2-transformer framework exhibits strong generalizability in a variety of scenarios.

Abstract Image

数据匮乏情况下合成图像在滑坡分割中的潜力:结合 GAN 和变换器模型的框架
从遥感数据中进行精确的滑坡分割对于高效的应急响应和风险管理至关重要。近年来,数据驱动的深度学习方法已成为该领域的一个重要关注点。然而,有限的滑坡数据往往限制了这些方法的有效性。本研究介绍了用于滑坡分割的 StyleGAN2 变换器框架,首次利用生成式对抗网络(GAN)创建合成的高质量滑坡图像,以解决影响滑坡分割模型性能的数据稀缺问题。我们开发了两个数据集:一个包含有限的真实滑坡图像集,另一个辅以 StyleGAN2 生成的合成滑坡图像。这些数据集有助于进行比较实验,定量评估合成数据对卷积神经网络(CNN)和变压器系列模型性能的影响,并采用一套指标进行全面评估。研究结果表明,添加来自 StyleGAN2 的合成滑坡图像可显著提高大多数滑坡分割模型的整体准确性,提高幅度超过 10%。此外,将 StyleGAN2 与转换器模型集成在一起是一种优化方法,因为在有足够训练数据的情况下,转换器模型的准确性超过了 CNN 模型。最后,研究结果还证实,StyleGAN2-变换器框架在各种情况下都具有很强的通用性。
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来源期刊
Landslides
Landslides 地学-地球科学综合
CiteScore
13.60
自引率
14.90%
发文量
191
审稿时长
>12 weeks
期刊介绍: Landslides are gravitational mass movements of rock, debris or earth. They may occur in conjunction with other major natural disasters such as floods, earthquakes and volcanic eruptions. Expanding urbanization and changing land-use practices have increased the incidence of landslide disasters. Landslides as catastrophic events include human injury, loss of life and economic devastation and are studied as part of the fields of earth, water and engineering sciences. The aim of the journal Landslides is to be the common platform for the publication of integrated research on landslide processes, hazards, risk analysis, mitigation, and the protection of our cultural heritage and the environment. The journal publishes research papers, news of recent landslide events and information on the activities of the International Consortium on Landslides. - Landslide dynamics, mechanisms and processes - Landslide risk evaluation: hazard assessment, hazard mapping, and vulnerability assessment - Geological, Geotechnical, Hydrological and Geophysical modeling - Effects of meteorological, hydrological and global climatic change factors - Monitoring including remote sensing and other non-invasive systems - New technology, expert and intelligent systems - Application of GIS techniques - Rock slides, rock falls, debris flows, earth flows, and lateral spreads - Large-scale landslides, lahars and pyroclastic flows in volcanic zones - Marine and reservoir related landslides - Landslide related tsunamis and seiches - Landslide disasters in urban areas and along critical infrastructure - Landslides and natural resources - Land development and land-use practices - Landslide remedial measures / prevention works - Temporal and spatial prediction of landslides - Early warning and evacuation - Global landslide database
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