Starfui 星律科技
联系我们
← 返回新闻动态 学术动态

学术动态:MOCA-Net: A Model for Automatic Segmentation of Retrogressive Thaw Slumps from Sentinel-2 Imagery Along the Qingha.

MDPI Sensors 论文摘要:Retrogressive thaw slumps (RTSs) serve as key indicators of global climate change and also pose significant risks to critical infrastructure along the Qinghai–Tibet Engineering Corridor (QTEC). Accurate

创建时间

论文标题:MOCA-Net: A Model for Automatic Segmentation of Retrogressive Thaw Slumps from Sentinel-2 Imagery Along the Qinghai–Tibet Engineering Corridor

发布日期:2026-05-21

作者:Yijiang Li, Qiong Li, Guoxin Chen, Wenqi Li, Changyan Bao

DOI:10.3390/s26103267

论文摘要:Retrogressive thaw slumps (RTSs) serve as key indicators of global climate change and also pose significant risks to critical infrastructure along the Qinghai–Tibet Engineering Corridor (QTEC). Accurate automatic segmentation of RTSs using Sentinel-2 imagery is of great value for climate change research and risk assessment, owing to the dataset’s ready availability and extensive spatiotemporal coverage. However, this segmentation task remains challenging due to the complex morphology and variable sizes of RTSs, as well as their low contrast and fuzzy boundaries against the surrounding landscape in medium-resolution satellite imagery. To deal with these challenges, this study proposes the Multi-Scale Object-aware Context Attention Network (MOCA-Net), which enhances the Swin Transformer backbone through two critical components: the Feature Enhancement Network and Enhanced Decoder. Evaluation metrics show that MOCA-Net outperforms seven mainstream baseline models, achieving a Mean Intersection over Union (mIoU) of 0.8609 and an RTS-class IoU of 0.7473. The qualitative visual evaluation further confirms MOCA-Net’s improved performance in delineating RTSs through more accurate morphologies and boundaries. Ablation studies confirm that each designed component contributes to the MOCA-Net’s segmentation performance, and their combination yields more balanced results. This model unlocks the capability of Sentinel-2 imagery for accurate RTS segmentation, making it promising for applications over large spatiotemporal extents.

元数据:Crossref 收录的 MDPI Sensors 论文。 DOI: 10.3390/s26103267. Vol. 26, Issue 10. Authors: Yijiang Li, Qiong Li, Guoxin Chen, Wenqi Li, Changyan Bao.

开放许可: https://creativecommons.org/licenses/by/4.0/

原文链接: https://doi.org/10.3390/s26103267

PDF 链接: https://www.mdpi.com/1424-8220/26/10/3267/pdf

来源: MDPI Sensors via Crossref

获取专属解决方案与报价

我们的专家团队随时为您提供支持

电话咨询15280165257

邮箱联系info@starfui.com

工作时间周一至周五 9:00 - 18:00

立即联系
星律科技信息咨询二维码

添加微信咨询