IEEE AP-S/URSI 2022
COVID-19 Updates
General
Home
Steering and Organizing Committee
Important Dates
Photos from the Conference
Registration
Program
Technical Program
Plenary Talks
Short Courses
Special Sessions
Women in Engineering
Social Program
Companion Program
Amateur Radio Activities
Master Class
Technology Demonstrations
For Authors
Call for Papers
Submit a Paper
Upload Virtual Presentation
AP-S Topics
URSI Topics
Raj Mittra Travel Grant
Mojgan Daneshmand Grant
TICRA Travel Grants
For Students
Student Paper Competition
Student Design Contest
Student Travel Grant
C. J. Reddy Travel Grant for Graduate Students
Region 9 Student Travel Grants
Master Class
Venue/Travel
Visa Requirements
Venue
Hotels
Things to See and Do
Travel
Event Locations
Sponsorship & Exhibition
Current Sponsors & Exhibitors
Sponsorships
Exhibits
10-15 July 2022 • Denver, Colorado, USA
IEEE AP-S/URSI 2022
10-15 July 2022 • Denver, Colorado, USA
Technical Program
Session WE-SP.3A
Paper WE-SP.3A.9
WE-SP.3A.9
Virtual Presentation
On the Use of Machine Learning and Deep Learning for Radar- Based Passenger Monitoring
Hajar Abedi, Martin Ma, Jennifer Yu, James He, Ahmad Ansariyan, George Shaker, University of Waterloo, Canada
Session:
Frontiers and Challenges in Electromagnetic Imaging Enabled by Artificial Intelligence and Deep Learning
Track:
Special Sessions
Location:
Agate A/B/C (HR)
Presentation Time:
Wed, 13 Jul, 11:00 - 11:20 Denver Time (UTC -7)
Session Co-Chairs:
Marco Salucci, ELEDIA@UniTN - University of Trento and George Shaker, University of Waterloo
Presentation
Discussion
Session WE-SP.3A
WE-SP.3A.1: Multiphysics Joint Inversion Using Successive Deep Perceptual Constraints
Yanyan Hu, Jiefu Chen, Xuqing Wu, University of Houston, United States; Yueqin Huang, Cyentech, United States
WE-SP.3A.2: AI-Enhanced Global Optimization for Microwave Brain Imaging
Francesco Zardi, Marco Salucci, Lorenzo Poli, Andrea Massa, ELEDIA@UniTN - University of Trento, Italy
WE-SP.3A.3: Efficient Data Generation for Stroke Classification via Multilayer Perceptron
Valeria Mariano, Jorge Alberto Tobon Vasquez, Mario R. Casu, Francesca Vipiana, Politecnico di Torino, Italy
WE-SP.3A.4: Microwave Data Inversion With a Model Compression Scheme Based on Deep Learning
Rui Guo, Zhichao Lin, Maokun Li, Fan Yang, Shenheng Xu, Tsinghua University, China; Aria Abubakar, Schlumberger, China
WE-SP.3A.5: Combined Machine Learning- Inversion Scheme for Super-Resolution 3-Dimensional Microwave Human Brain Imaging
Le-Yi Zhao, Li-Ye Xiao, Yu Cheng, Xiamen University, China; QingHuo Liu, Duke University, China
WE-SP.3A.6: 3D-printed gear system for antenna motion in an MR environment: initial phantom imaging experiments
Paul Meaney, Timothy Raynolds, Shireen Geimer, Grace Player, Keith Paulsen, Dartmouth College, United States; Xiaoyu Yang, Quality Electrodynamics, United States
WE-SP.3A.7: A hybrid CNN-NGBoost model for probabilistic image-driven path loss prediction
Sotirios Sotiroudis, Sotirios Goudos, Aristotle University of Thessaloniki, Greece; Christos Christodoulou, University of New Mexico, United States
WE-SP.3A.8: Semantic Segmentation of Xenograft Tumor Tissues Imaged with Pulsed Terahertz Technology
Haoyan Liu, Nagma Vohra, Magda El-Shenawee, Alexander Nelson, University of Arkansas, Fayetteville, United States; Keith Bailey, Charles River Laboratories, United States
WE-SP.3A.9: On the Use of Machine Learning and Deep Learning for Radar- Based Passenger Monitoring
Hajar Abedi, Martin Ma, Jennifer Yu, James He, Ahmad Ansariyan, George Shaker, University of Waterloo, Canada
Resources
No resources available.