Benchmarking Deep Learning Classifiers for SAR Automatic Target Recognition
Jacob Fein-Ashley, Tian Ye, Rajgopal Kannan, Viktor Prasanna, Carl, Busart

TL;DR
This paper benchmarks various deep learning models for SAR ATR, evaluating accuracy, speed, and resource use across multiple datasets to guide model selection in real-world applications.
Contribution
It provides a comprehensive comparison of five advanced deep learning models for SAR ATR, considering multiple performance metrics across diverse datasets.
Findings
GNN classifier has the best throughput and latency.
No single model excels in all performance metrics.
Model selection should be context-dependent for SAR ATR applications.
Abstract
Synthetic Aperture Radar SAR Automatic Target Recognition ATR is a key technique of remote-sensing image recognition which can be supported by deep neural networks The existing works of SAR ATR mostly focus on improving the accuracy of the target recognition while ignoring the systems performance in terms of speed and storage which is critical to real-world applications of SAR ATR For decision-makers aiming to identify a proper deep learning model to deploy in a SAR ATR system it is important to understand the performance of different candidate deep learning models and determine the best model accordingly This paper comprehensively benchmarks several advanced deep learning models for SAR ATR with multiple distinct SAR imagery datasets Specifically we train and test five SAR image classifiers based on Residual Neural Networks ResNet18 ResNet34 ResNet50 Graph Neural Network GNN and Vision…
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Taxonomy
TopicsAdvanced SAR Imaging Techniques · Remote-Sensing Image Classification · Domain Adaptation and Few-Shot Learning
MethodsMulti-Head Attention · Dropout · Linear Layer · Dense Connections · Position-Wise Feed-Forward Layer · Focus · Absolute Position Encodings · Label Smoothing · Byte Pair Encoding · Attention Is All You Need
