IGARSS 2025
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2025 IEEE International Geoscience and Remote Sensing Symposium
3 - 8 August 2025 • Brisbane, Australia
2025 IEEE International Geoscience and Remote Sensing Symposium
3 - 8 August 2025 • Brisbane, Australia
2025 IEEE International Geoscience and Remote Sensing Symposium
3 - 8 August 2025 • Brisbane, Australia
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Technical Program
Session TH1.P9
TH1.P9: T/D.11 Extra Oral 1
Thursday, 7 August, 08:00 - 09:15
Location:
Room P9
Session Type:
Oral
Track:
Data Analysis
Thu, 7 Aug, 08:00 - 08:15
TH1.P9.1: DEEP LEARNING-BASED COMPLEX-VALUED BINARY TRANSFORM FOR MILLIMETER-WAVE FMCW RADAR RANGE-DOMAIN TARGET DETECTION
Xibo Chen, Kai Xiong, Hongrui Zhang, Xiguang Wu, Bo Li, Bing Chen, Yan Liu, Genquan Han, Xidian University, China
Thu, 7 Aug, 08:15 - 08:30
TH1.P9.2: KOLMOGOROV–ARNOLD NETWORKS FOR HIGH-RESOLUTION RANGE PROFILE RECOGNITION IN RADAR APPLICATIONS
Kejun Ye, University of Sheffield, China; Yanhua Wang, Beijing Institute of Technology, China; Rola Saad, University of Sheffield, United Kingdom
Thu, 7 Aug, 08:30 - 08:45
TH1.P9.3: DETECTION OF ROBOT DOG BASED ON MICRO-DOPPLER SIGNATURES USING CONTRASTIVE SUPERVISED LEARNING
MINSEO SEONG, INSOO CHOI, YOUNGWOOK KIM, SOGANG UNIVERSITY, Korea (South)