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Ye, Ning; Xu, Yi-Han; Zhou, Wen; Yu, Gang; Zhou, Ding (2025) MKF-NET: KAN-Enhanced Vision Transformer for Remote Sensing Image Segmentation. Applied Sciences, 15 (20). doi:10.3390/app152010905

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Reference TypeJournal (article/letter/editorial)
TitleMKF-NET: KAN-Enhanced Vision Transformer for Remote Sensing Image Segmentation
JournalApplied Sciences
AuthorsYe, NingAuthor
Xu, Yi-HanAuthor
Zhou, WenAuthor
Yu, GangAuthor
Zhou, DingAuthor
Year2025 (October 10)Volume15
Issue20
PublisherMDPI AG
DOIdoi:10.3390/app152010905Search in ResearchGate
Generate Citation Formats
Mindat Ref. ID19050776Long-form Identifiermindat:1:5:19050776:5
GUID0
Full ReferenceYe, Ning; Xu, Yi-Han; Zhou, Wen; Yu, Gang; Zhou, Ding (2025) MKF-NET: KAN-Enhanced Vision Transformer for Remote Sensing Image Segmentation. Applied Sciences, 15 (20). doi:10.3390/app152010905
Plain TextYe, Ning; Xu, Yi-Han; Zhou, Wen; Yu, Gang; Zhou, Ding (2025) MKF-NET: KAN-Enhanced Vision Transformer for Remote Sensing Image Segmentation. Applied Sciences, 15 (20). doi:10.3390/app152010905
In(2025, October) Applied Sciences Vol. 15 (20). MDPI AG

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