Friday, September 20, 2024

TMTT CFP Special Issue on Latest Advances on Radar-Based Physiological Sensors and Their Applications

Radar can be used for human non-contact monitoring and interaction

TMTT CFP Special Issue on Latest Advances on Radar-Based Physiological Sensors and Their Applications

Call for Papers (CFP) for a Special Issue of the IEEE Transactions on Microwave Theory and Techniques, focused on "Latest Advances in Radar-Based Physiological Sensors and Their Applications." Here are some of the key points:

1. Submission Deadline: October 31, 2024
2. Publication Date: April 2025

3. Guest Editors:
   - Olga Boric-Lubecke (University of Hawaii at Manoa)
   - Victor Lubecke (University of Hawaii at Manoa)
   - Chung-Tse Michael Wu (Rutgers University)
   - Emanuele Cardillo (University of Messina)
   - Shekh Md. Mahmudul Islam (University of Dhaka)

4. Motivation:
   - Growing interest in contactless radar-based physiological sensors
   - Driven by hardware advances in automotive radar and next-generation communications
   - Applications in healthcare, industry, and security

5. Technological Context:
   - Availability of millimeter-wave radar hardware (24 GHz to over 240 GHz)
   - Integration with MIMO/beam steering capabilities
   - Emergence of 6G communications with joint communication and sensing (JCAS)

6. Key Research Questions:
   - Nature of measurements
   - Optimal waveforms and operating frequencies
   - Limitations on radar sensitivity
   - Metrics for accuracy and performance benchmarking
   - Isolation of relevant motion from extraneous motion

7. Topics of Interest:
   - Fundamental questions about physiological radar signals
   - Novel radar architectures and hardware advances
   - Advances in demodulation and signal analysis
   - Emerging applications in various fields

The CFP encourages submissions on the latest advancements in radar-based physiological sensors, covering both theoretical and practical aspects of this technology. Authors should consult https://mtt.org/author-information-transactions/ for further submission instructions.

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