Adaptive target enhancer: Bridging the gap between synthetic and measured SAR images for automatic target recognition
AB Campos, RD Molin, LP Ramos… - 2023 IEEE Radar …, 2023 - ieeexplore.ieee.org
2023 IEEE Radar Conference (RadarConf23), 2023•ieeexplore.ieee.org
Automatic target recognition (ATR) algorithms have been successfully used for vehicle
classification in synthetic aperture radar (SAR) images over the past few decades. For this
application, however, the scarcity of labeled data is often a limiting factor for supervised
approaches. While the advent of computer-simulated images may result in additional data
for ATR, there is still a substantial gap between synthetic and measured images. In this
paper, we propose the so-called adaptive target enhancer (ATE), a tool designed to …
classification in synthetic aperture radar (SAR) images over the past few decades. For this
application, however, the scarcity of labeled data is often a limiting factor for supervised
approaches. While the advent of computer-simulated images may result in additional data
for ATR, there is still a substantial gap between synthetic and measured images. In this
paper, we propose the so-called adaptive target enhancer (ATE), a tool designed to …
Automatic target recognition (ATR) algorithms have been successfully used for vehicle classification in synthetic aperture radar (SAR) images over the past few decades. For this application, however, the scarcity of labeled data is often a limiting factor for supervised approaches. While the advent of computer-simulated images may result in additional data for ATR, there is still a substantial gap between synthetic and measured images. In this paper, we propose the so-called adaptive target enhancer (ATE), a tool designed to automatically delimit and weight the region of an image that contains or is affected by the presence of a target. Results for the publicly released Synthetic and Measured Paired and Labeled Experiment (SAMPLE) dataset show that, by defining regions of interest and suppressing the background, we can increase the classification accuracy from 68% to 84% while only using artificially generated images for training.
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