RISE: Real-time Image Processing for Spectral Energy Detection and Localization
Abstract
Energy detection is widely used for spectrum sensing, but accurately localizing the time and frequency occupation of signals in real-time for efficient spectrum sharing remains challenging. To address this challenge, we present RISE, a software-based spectrum sensing system designed for real-time signal detection and localization. RISE treats time-frequency spectrum plots as images and applies adaptive thresholding, morphological operations, and connected component labeling with a multi-threaded architecture. We evaluate RISE using both synthetic data and controlled over-the-air (OTA) experiments across diverse signal types. Results show that RISE satisfies real-time latency constraints while achieving a probability of detection of 80.42% at an intersection-over-union (IoU) threshold of 0.4. RISE sustains a raw I/Q input rate of 3.2 Gbps for 100 MHz bandwidth sensing with time and frequency resolutions of 10.24 us and 97.6 kHz, respectively. Compared to Searchlight, a representative energy-based method, RISE achieves 20.51x lower latency and 22.31% higher IoU. Compared to machine learning baselines, RISE improves IoU by 56.02% over DeepRadar while meeting the real-time deadline, which a GPU-accelerated U-Net exceeds by 213.38x.
Cite
@article{arxiv.2603.20481,
title = {RISE: Real-time Image Processing for Spectral Energy Detection and Localization},
author = {Chung-Hsuan Tung and Zhenzhou Qi and Tingjun Chen},
journal= {arXiv preprint arXiv:2603.20481},
year = {2026}
}
Comments
Accepted for publication in IEEE International Symposium on Dynamic Spectrum Access Networks (DySPAN) 2026