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Main Authors: Gunn, Edward, Hosford, Adam, Jones, Robert, Zeitler, Leo, Groves, Ian, Nockles, Victoria
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2602.03856
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author Gunn, Edward
Hosford, Adam
Jones, Robert
Zeitler, Leo
Groves, Ian
Nockles, Victoria
author_facet Gunn, Edward
Hosford, Adam
Jones, Robert
Zeitler, Leo
Groves, Ian
Nockles, Victoria
contents We present the Turing Synthetic Radar Dataset, a comprehensive dataset to serve both as a benchmark for radar pulse deinterleaving research and as an enabler of new research methods. The dataset addresses the critical problem of separating interleaved radar pulses from multiple unknown emitters for electronic warfare applications and signal intelligence. Our dataset contains a total of 6000 pulse trains over two receiver configurations, totalling to almost 3 billion pulses, featuring realistic scenarios with up to 110 emitters and significant parameter space overlap. To encourage dataset adoption and establish standardised evaluation procedures, we have launched an accompanying Turing Deinterleaving Challenge, for which models need to associate pulses in interleaved pulse trains to the correct emitter by clustering and maximising metrics such as the V-measure. The Turing Synthetic Radar Dataset is one of the first publicly available, comprehensively simulated pulse train datasets aimed to facilitate sophisticated model development in the electronic warfare community
format Preprint
id arxiv_https___arxiv_org_abs_2602_03856
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle The Turing Synthetic Radar Dataset: A dataset for pulse deinterleaving
Gunn, Edward
Hosford, Adam
Jones, Robert
Zeitler, Leo
Groves, Ian
Nockles, Victoria
Signal Processing
Machine Learning
We present the Turing Synthetic Radar Dataset, a comprehensive dataset to serve both as a benchmark for radar pulse deinterleaving research and as an enabler of new research methods. The dataset addresses the critical problem of separating interleaved radar pulses from multiple unknown emitters for electronic warfare applications and signal intelligence. Our dataset contains a total of 6000 pulse trains over two receiver configurations, totalling to almost 3 billion pulses, featuring realistic scenarios with up to 110 emitters and significant parameter space overlap. To encourage dataset adoption and establish standardised evaluation procedures, we have launched an accompanying Turing Deinterleaving Challenge, for which models need to associate pulses in interleaved pulse trains to the correct emitter by clustering and maximising metrics such as the V-measure. The Turing Synthetic Radar Dataset is one of the first publicly available, comprehensively simulated pulse train datasets aimed to facilitate sophisticated model development in the electronic warfare community
title The Turing Synthetic Radar Dataset: A dataset for pulse deinterleaving
topic Signal Processing
Machine Learning
url https://arxiv.org/abs/2602.03856