2011
DOI: 10.1117/12.890228
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A comparison of machine learning methods for target recognition using ISAR imagery

Abstract: The ability to accurately classify targets is critical to the performance of automated/assisted target recognition (ATR) algorithms. Supervised machine learning methods have been shown to be able to classify data in a variety of disciplines with a high level of accuracy. The performance of machine learning techniques in classifying ground targets in twodimensional radar imagery were compared. Three machine learning models were compared to determine which model best classifies targets with the highest accuracy:… Show more

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Cited by 1 publication
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“…Three ML algorithms were introduced in [507] for ISAR targets classification, i.e., DT, Bayes, and SVM. A SAE learning algorithm was employed in [508] to solve the classification issue of non-cooperative airplane targets with ISAR images.…”
Section: B Isar Images Processingmentioning
confidence: 99%
“…Three ML algorithms were introduced in [507] for ISAR targets classification, i.e., DT, Bayes, and SVM. A SAE learning algorithm was employed in [508] to solve the classification issue of non-cooperative airplane targets with ISAR images.…”
Section: B Isar Images Processingmentioning
confidence: 99%