Faster Region-Based CNN Spectrum Sensing and Signal Identification in Cluttered RF Environments
Todd Morehouse, Charles Montes, Ruolin Zhou

TL;DR
This paper presents an optimized 1D Faster R-CNN for rapid and accurate spectrum sensing and signal identification in cluttered RF environments, outperforming 2D methods in speed and localization.
Contribution
We adapt and optimize Faster R-CNN for 1D spectrum signals, enabling faster and more accurate detection and localization in complex RF environments.
Findings
Better localization performance than 2D methods
Faster detection speed
Effective modulation identification in real-world tests
Abstract
In this paper, we optimize a faster region-based convolutional neural network (FRCNN) for 1-dimensional (1D) signal processing and electromagnetic spectrum sensing. We target a cluttered radio frequency (RF) environment, where multiple RF transmission can be present at various frequencies with different bandwidths. The challenge is to accurately and quickly detect and localize each signal with minimal prior information of the signal within a band of interest. As the number of wireless devices grow, and devices become more complex from advances such as software defined radio (SDR), this task becomes increasingly difficult. It is important for sensing devices to keep up with this change, to ensure optimal spectrum usage, to monitor traffic over-the-air for security concerns, and for identifying devices in electronic warfare. Machine learning object detection has shown to be effective for…
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Taxonomy
TopicsIndoor and Outdoor Localization Technologies · Advanced SAR Imaging Techniques · Wireless Signal Modulation Classification
