Advances in AI are transforming radar-based ATR for security and surveillance. Traditional radar relies on signal processing but struggles in high-dimensional settings where AI excels. This thesis integrates neural networks with 1D, 2D, and 3D radar data to enhance classification and detection in safety-critical environments. The 1D radar section focuses on ultra-wideband echo classification to detect weapons hidden under clothing. Neural networks process late time response data to distinguish between benign and threatening items, enabling non-invasive, real-time monitoring. In the 2D section, the study addresses the “black box” nature of neural networks by incorporating explainable AI techniques. Methods like local interpretable model-agnostic explanations and generative adversarial networks improve transparency and support synthetic data generation, mitigating data shortages. The 3D chapter introduces a transformer-based ATR system for three-dimensional interferometric inverse synthetic aperture radar point cloud data. This transformer architecture captures intricate object details and delivers high classification accuracy even with limited real-world data, thanks to a curated synthetic dataset that enhances model generalization. Overall, this work advances ATR technology by combining AI techniques across multiple radar dimensions, improving detection accuracy and bolstering the deployment of AI-driven algorithms in radar classification applications.
From Signals to Point Clouds: Enhancing Radar Target Classification with Neural Networks
MEUCCI, GIULIO
2025
Abstract
Advances in AI are transforming radar-based ATR for security and surveillance. Traditional radar relies on signal processing but struggles in high-dimensional settings where AI excels. This thesis integrates neural networks with 1D, 2D, and 3D radar data to enhance classification and detection in safety-critical environments. The 1D radar section focuses on ultra-wideband echo classification to detect weapons hidden under clothing. Neural networks process late time response data to distinguish between benign and threatening items, enabling non-invasive, real-time monitoring. In the 2D section, the study addresses the “black box” nature of neural networks by incorporating explainable AI techniques. Methods like local interpretable model-agnostic explanations and generative adversarial networks improve transparency and support synthetic data generation, mitigating data shortages. The 3D chapter introduces a transformer-based ATR system for three-dimensional interferometric inverse synthetic aperture radar point cloud data. This transformer architecture captures intricate object details and delivers high classification accuracy even with limited real-world data, thanks to a curated synthetic dataset that enhances model generalization. Overall, this work advances ATR technology by combining AI techniques across multiple radar dimensions, improving detection accuracy and bolstering the deployment of AI-driven algorithms in radar classification applications.File | Dimensione | Formato | |
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PhdThesis_GMeucci.pdf
embargo fino al 17/02/2028
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34.35 MB | Adobe PDF | |
REPORT_Meucci.pdf
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111.05 kB | Adobe PDF |
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https://hdl.handle.net/20.500.14242/215879
URN:NBN:IT:UNIPI-215879