Deep Learning Object Detection Approaches to Source Identification
- URL: http://arxiv.org/abs/2210.16173v1
- Date: Thu, 27 Oct 2022 02:08:46 GMT
- Title: Deep Learning Object Detection Approaches to Source Identification
- Authors: Luke Wood, Kevin Anderson, Peter Gerstoft
- Abstract summary: We propose a system that manages to alleviate the failure cases encountered when using traditional source identification algorithms.
Our contributions include framing source identification as an object detection problem, the publication of a spectrogram object detection dataset, and evaluation of the RetinaNet and YOLOv5 object detection models trained on the dataset.
- Score: 15.813217907813778
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Traditionally source identification is solved using threshold based energy
detection algorithms. These algorithms frequently sum up the activity in
regions, and consider regions above a specific activity threshold to be
sources. While these algorithms work for the majority of cases, they often fail
to detect signals that occupy small frequency bands, fail to distinguish
sources with overlapping frequency bands, and cannot detect any signals under a
specified signal to noise ratio. Through the conversion of raw signal data to
spectrogram, source identification can be framed as an object detection
problem. By leveraging modern advancements in deep learning based object
detection, we propose a system that manages to alleviate the failure cases
encountered when using traditional source identification algorithms. Our
contributions include framing source identification as an object detection
problem, the publication of a spectrogram object detection dataset, and
evaluation of the RetinaNet and YOLOv5 object detection models trained on the
dataset. Our final models achieve Mean Average Precisions of up to 0.906. With
such a high Mean Average Precision, these models are sufficiently robust for
use in real world applications.
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