The number of wirelessly connected devices has grown rapidly in recent years, making wireless signals such as WiFi ubiquitous. This has resulted in considerable interest in applying communication signals for sensing and learning about the environment. Examples include sensing with WiFi signals, with Millimeter Waves (mmWaves), or as part of next generation cellular systems. Imaging objects, on the other hand, can be used for applications including smart homes, structural health monitoring, search and rescue, surveillance, excavation, autonomous driving and more. If details of objects and spaces can be sensed with cheap, omnipresent WiFi devices, or with the mmWave signals of the next generation cellular systems, it will create new possibilities for many applications, and it can be used to complement existing imaging sensors. While RF signals have shown promise in applications where there is motion (e.g., body motion), imaging details of still objects with RF signals has remained a challenge, due to lack of motion. The traditional method of using cameras for imaging, on the other hand, is limited by cameras’ inability to look through occlusions and walls and their unreliability in low-light conditions.
Researchers at the University of California, Santa Barbara have created a novel method for imaging with Radio Frequency (RF) signals, by exploiting the phenomenon of diffraction. More specifically, the invention uses the interaction of edges of the objects with the incoming waves. In this application, edges are not limited to visibly sharp edges but include any surface whose radius is relatively small. This innovative method images the edges of objects, scenery, or entities, utilizing the interaction between one or more transmitted signals and the edges (or surfaces with small enough curvatures) in the imaging area of interest by exploiting the Geometrical Theory of Diffraction (GTD) and the corresponding Keller cones. The method results in much better imaging results than state of the art.
This method does not require specialized or expensive equipment to produce high quality images of objects. Further, the method is not machine-learning based, which means it does not rely on collecting RF training data, which is often cumbersome and limited in generalizability to new areas.
Publication: https://dl.acm.org/doi/10.1145/3495243.3514261
Patent Pending
RF Signals, Geometrical Theory of Diffraction, WiFi, Sensing, Wireless, mmWaves, Imaging Sensors, Imaging