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Papers/RFI Detection with Spiking Neural Networks

RFI Detection with Spiking Neural Networks

Nicholas J. Pritchard, Andreas Wicenec, Mohammed Bennamoun, Richard Dodson

2023-11-24Semantic SegmentationAstronomy
PaperPDFCode(official)

Abstract

Detecting and mitigating Radio Frequency Interference (RFI) is critical for enabling and maximising the scientific output of radio telescopes. The emergence of machine learning methods has led to their application in radio astronomy, and in RFI detection. Spiking Neural Networks (SNNs), inspired by biological systems, are well-suited for processing spatio-temporal data. This study introduces the first exploratory application of SNNs to an astronomical data-processing task, specifically RFI detection. We adapt the nearest-latent-neighbours (NLN) algorithm and auto-encoder architecture proposed by previous authors to SNN execution by direct ANN2SNN conversion, enabling simplified downstream RFI detection by sampling the naturally varying latent space from the internal spiking neurons. Our subsequent evaluation aims to determine whether SNNs are viable for future RFI detection schemes. We evaluate detection performance with the simulated HERA telescope and hand-labelled LOFAR observation dataset the original authors provided. We additionally evaluate detection performance with a new MeerKAT-inspired simulation dataset that provides a technical challenge for machine-learnt RFI detection methods. This dataset focuses on satellite-based RFI, an increasingly important class of RFI and is an additional contribution. Our approach remains competitive with existing methods in AUROC, AUPRC and F1 scores for the HERA dataset but exhibits difficulty in the LOFAR and Tabascal datasets. Our method maintains this accuracy while completely removing the compute and memory-intense latent sampling step found in NLN. This work demonstrates the viability of SNNs as a promising avenue for machine-learning-based RFI detection in radio telescopes by establishing a minimal performance baseline on traditional and nascent satellite-based RFI sources and is the first work to our knowledge to apply SNNs in astronomy.

Results

TaskDatasetMetricValueModel
Semantic SegmentationLOFAR RFI DetectionAUPRC0.414Nearest Latent Neighbours
Semantic SegmentationLOFAR RFI DetectionAUROC0.818Nearest Latent Neighbours
Semantic SegmentationLOFAR RFI DetectionF10.48Nearest Latent Neighbours
Semantic SegmentationLOFAR RFI DetectionAUPRC0.321Spiking Nerest Latent Neighbours
Semantic SegmentationLOFAR RFI DetectionAUROC0.609Spiking Nerest Latent Neighbours
Semantic SegmentationLOFAR RFI DetectionF10.408Spiking Nerest Latent Neighbours
Semantic SegmentationHERA RFI DetectionAUPRC0.94Nearest Latent Neighbours
Semantic SegmentationHERA RFI DetectionAUROC0.983Nearest Latent Neighbours
Semantic SegmentationHERA RFI DetectionF10.939Nearest Latent Neighbours
Semantic SegmentationHERA RFI DetectionAUPRC0.92Spiking Nerest Latent Neighbours
Semantic SegmentationHERA RFI DetectionAUROC0.944Spiking Nerest Latent Neighbours
Semantic SegmentationHERA RFI DetectionF10.953Spiking Nerest Latent Neighbours
10-shot image generationLOFAR RFI DetectionAUPRC0.414Nearest Latent Neighbours
10-shot image generationLOFAR RFI DetectionAUROC0.818Nearest Latent Neighbours
10-shot image generationLOFAR RFI DetectionF10.48Nearest Latent Neighbours
10-shot image generationLOFAR RFI DetectionAUPRC0.321Spiking Nerest Latent Neighbours
10-shot image generationLOFAR RFI DetectionAUROC0.609Spiking Nerest Latent Neighbours
10-shot image generationLOFAR RFI DetectionF10.408Spiking Nerest Latent Neighbours
10-shot image generationHERA RFI DetectionAUPRC0.94Nearest Latent Neighbours
10-shot image generationHERA RFI DetectionAUROC0.983Nearest Latent Neighbours
10-shot image generationHERA RFI DetectionF10.939Nearest Latent Neighbours
10-shot image generationHERA RFI DetectionAUPRC0.92Spiking Nerest Latent Neighbours
10-shot image generationHERA RFI DetectionAUROC0.944Spiking Nerest Latent Neighbours
10-shot image generationHERA RFI DetectionF10.953Spiking Nerest Latent Neighbours

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