

浏览全部资源
扫码关注微信
1. 新疆大学软件学院新疆大数据与智能软件工程研究中心
2. 新疆大学软件工程重点实验室
3. 新疆大学计算机科学与技术学院
4. 丝路多语言认知计算国际合作联合实验室
Published:2025
移动端阅览
[1]卢毅果,钱育蓉,白璐,等.SWLS:沙湾市遥感图像土地覆盖语义分割数据集[J].新疆大学学报(自然科学版中英文),2025,42(04):434-443.
[1]卢毅果,钱育蓉,白璐,等.SWLS:沙湾市遥感图像土地覆盖语义分割数据集[J].新疆大学学报(自然科学版中英文),2025,42(04):434-443. DOI: 10.13568/j.cnki.651094.651316.2024.12.29.0002.
DOI:10.13568/j.cnki.651094.651316.2024.12.29.0002.
近年来,随着国产高分卫星数据获取的便利性提升,遥感图像在城市扩展监测、水资源管理及农业应用等领域的解译需求愈发迫切,遥感图像语义分割技术逐渐成为核心手段之一,高质量的基准数据集是训练和评估遥感图像语义分割算法的基础.现有土地覆盖语义分割数据集大多缺乏近红外波段,地物标注精细度和多样性不足,且缺少新疆特有地貌的数据支持,限制了模型在特定地区实际应用的效果.为此,提出了一个专注于新疆沙湾市的高分辨率多光谱卫星遥感图像土地覆盖语义分割数据集Shawan Land-cover Semantic Segmentation Dataset(SWLS),该数据集基于高分一号卫星(GF-1)的多光谱图像,涵盖了RGB和近红外4个波段,具有更精细的地物标注,尤其在防风林和建筑物等复杂类别上具备差异化标注.在SWLS数据集上对多种经典卷积神经网络和Transformer架构的语义分割模型进行了全面评估,卷积架构模型最高m IoU为87.46%
Transformer架构最高m IoU为69.83%.
In recent years
with the increasing accessibility of high-resolution domestic satellite data
the demand for interpreting remote sensing images in areas such as urban expansion monitoring
water resource management
and agricultural applications has grown significantly. Semantic segmentation of remote sensing images has gradually become one of the core techniques in this field. High-quality benchmark dataset is fundamental for training and evaluating semantic segmentation algorithms. However
existing land cover semantic segmentation datasets often lack near-infrared bands
have limited annotation precision and diversity
and do not include data specific to the unique geomorphology of Xinjiang of China
thereby limiting the effectiveness of models in practical applications in specific regions. To this end
the Shawan Land-cover Semantic Segmentation Dataset(SWLS) has been introduced.This dataset focuses on Shawan in Xinjiang and consists of high-resolution multispectral satellite remote sensing images acquired by the Gaofen-1(GF-1) satellite. It includes four bands: RGB and near-infrared
and features more detailed land cover annotations
particularly offering differentiated labeling for complex categories such as shelter forests and buildings. A comprehensive evaluation was conducted on the SWLS dataset using various classical Convolutional Neural Network(CNN) and Transformer-based semantic segmentation models. Among them
the best-performing CNN model achieved a maximum mean Intersection over Union(m IoU) of 87.46%
while the best Transformer-based model reached a maximum m IoU of 69.83%.
范树平,程从坤,刘友兆,等.中国土地利用/土地覆盖研究综述与展望[J].地域研究与开发,2017,36(2):94-101.FAN S P,CHENG C K,LIU Y Z,et al.Review and prospect on land use/cover research in China[J].Areal Research and Development,2017,36(2):94-101.(in Chinese)
杨广奇,刘慧,钟锡武,等.遥感图像时空融合综述[J].计算机工程与应用,2022,58(10):27-40.YANG G Q,LIU H,ZHONG X W,et al.Temporal and spatial fusion of remote sensing images:A review[J].Computer Engineering and Applications,2022,58(10):27-40.(in Chinese)
梁顺林,白瑞,陈晓娜,等.2019年中国陆表定量遥感发展综述[J].遥感学报,2020,24(6):618-671.LIANG S L,BAI R,CHEN X N,et al.Review of China’s land surface quantitative remote sensing development in 2019[J].Journal of Remote Sensing,2020,24(6):618-671.(in Chinese)
LI Z M,CHEN B,WU S B,et al.Deep learning for urban land use category classification:A review and experimental assessment[J].Remote Sensing of Environment,2024,311:114290.
ULLAH F,ULLAH I,KHAN R U,et al.Conventional to deep ensemble methods for hyperspectral image classification:A comprehensive survey[J].IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing,2024,17:3878-3916.
BOGUSZEWSKI A,BATORSKI D,ZIEMBA-JANKOWSKA N,et al.LandCover.ai:Dataset for automatic mapping of buildings,woodlands,water and roads from aerial imagery[C]//2021 IEEE/CVF Conference on Computer Vision and Pattern Recognition Workshops(CVPRW).June 19-25,2021.Nashville,TN,USA.IEEE,2021:1102-1110.
DEMIR I,KOPERSKI K,LINDENBAUM D,et al.Deep Globe 2018:A challenge to parse the Earth through satellite images[C]//2018 IEEE/CVF Conference on Computer Vision and Pattern Recognition Workshops(CVPRW).June 18-22,2018.Salt Lake City,UT,USA.IEEE,2018:172-181.
HELBER P,BISCHKE B,DENGEL A,et al.EuroSAT:A novel dataset and deep learning benchmark for land use and land cover classification[J].IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing,2019,12(7):2217-2226.
TONG X Y,XIA G S,LU Q K,et al.Land-cover classification with high-resolution remote sensing images using transferable deep models[J].Remote Sensing of Environment,2020,237:111322.
YANG K P,TONG X Y,XIA G S,et al.Hidden path selection network for semantic segmentation of remote sensing images[J].IEEE Transactions on Geoscience and Remote Sensing ,2022,60:1-15.
LONG J,SHELHAMER E,DARRELL T.Fully convolutional networks for semantic segmentation[C]//2015 IEEE Conference on Computer Vision and Pattern Recognition(CVPR).June 7-12,2015.Boston,MA,USA.IEEE,2015:3431-3440.
CHEN L C,PAPANDREOU G,KOKKINOS I,et al.Deep Lab:Semantic image segmentation with deep convolutional nets,atrous convolution,and fully connected CRFs[J].IEEE Transactions on Pattern Analysis and Machine Intelligence,2018,40(4):834-848.
CHEN L C,ZHU Y K,PAPANDREOU G,et al.Encoder-decoder with atrous separable convolution for semantic image segmentation[C]//Computer Vision-ECCV 2018.Cham:Springer,2018:833-851.
YU C Q,WANG J B,PENG C,et al.Bi Se Net:Bilateral segmentation network for real-time semantic segmentation[C]//Computer Vision-ECCV 2018.Cham:Springer,2018:334-349.
YU C Q,GAO C X,WANG J B,et al.Bi Se Net V2:Bilateral network with guided aggregation for real-time semantic segmentation[J].International Journal of Computer Vision ,2021,129(11):3051-3068.
FAN M Y,LAI S Q,HUANG J S,et al.Rethinking Bi Se Net for real-time semantic segmentation[C]//2021 IEEE/CVF Conference on Computer Vision and Pattern Recognition(CVPR).June 20-25,2021.Nashville,TN,USA.IEEE,2021:9711-9720.
ZHENG S X,LU J C,ZHAO H S,et al.Rethinking semantic segmentation from a sequence-to-sequence perspective with transformers[C]//2021 IEEE/CVF Conference on Computer Vision and Pattern Recognition(CVPR).June 20-25,2021.Nashville,TN,USA.IEEE,2021:6877-6886.
STRUDEL R,GARCIA R,LAPTEV I,et al.Segmenter:Transformer for semantic segmentation[C]//2021 IEEE/CVF International Conference on Computer Vision(ICCV).October 10-17,2021.Montreal,QC,Canada.IEEE,2021:7242-7252.
GAO L,LIU H,YANG M H,et al.STransFuse:Fusing swin transformer and convolutional neural network for remote sensing image semantic segmentation[J].IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing,2021,14:10990-11003.
SUN X,QIAN Y R,CAO R Y,et al.BGFNet:Semantic segmentation network based on boundary guidance[J].IEEE Geoscience and Remote Sensing Letters ,2024,21:2500305.
LIU P,QIAN Y R,WEI H Y,et al.Bi ReNet:Bilateral network with feature aggregation and edge detection for remote sensing images road extraction[C]//Pattern Recognition and Computer Vision.Singapore:Springer,2024:401-415.
DIAKOGIANNIS F I,WALDNER F,CACCETTA P,et al.ResUNet-a:A deep learning framework for semantic segmentation of remotely sensed data[J].ISPRS Journal of Photogrammetry and Remote Sensing ,2020,162:94-114.
SUN W H,CHEN B,MESSINGER D W.Nearest-neighbor diffusion-based pan-sharpening algorithm for spectral images[J].Optical Engineering,2014,53(1):013107.
EVERINGHAM M,VAN GOOL L,WILLIAMS C K I,et al.The pascal visual object classes(VOC)challenge[J].International Journal of Computer Vision,2010,88(2):303-338.
ZHAO H S,SHI J P,QI X J,et al.Pyramid scene parsing network[C]//2017 IEEE Conference on Computer Vision and Pattern Recognition(CVPR).July 21-26,2017.Honolulu,HI.IEEE,2017:6230-6239.
0
Views
20
下载量
0
CSCD
Publicity Resources
Related Articles
Related Author
Related Institution
京公网安备11010802024621