Catalyzed by the recent emergence of site-specific, high-fidelity radio frequency (RF) modeling and simulation tools purposed for radar, data-driven formulations of classical methods in radar have rapidly grown in popularity over the past decade. Despite this surge, limited focus has been directed toward the theoretical foundations of these classical methods. In this regard, as part of our ongoing data-driven approach to radar space-time adaptive processing (STAP), we analyze the asymptotic performance guarantees of select subspace separation methods in the context of radar target localization, and augment this analysis through a proposed deep learning framework for target location estimation. In our approach, we generate comprehensive data...
International audienceSpace time Adaptive Processing (STAP) for airborne RADAR fits the context of a...
We train a deep learning artificial neural network model, Spatial Attention U-Net to recover useful ...
This dissertation focuses on statistical signal processing theory and its applications to radar, com...
Space-time adaptive processing (STAP) of multi-channel radar data is an established and powerful met...
High resolution automotive radar sensors are required in order to meet the high bar of autonomous ve...
We address the challenge of tracking an unknown number of targets in strong clutter environments usi...
mmWave radars have recently gathered significant attention as a means to track human movement within...
Traditional radar space-time adaptive processing (STAP) cannot efficiently suppress heterogeneous cl...
Space-time adaptive processing (STAP) is an important airborne radar technique used to improve targe...
Recent research has shown the effectiveness of mmWave radar sensing for object detection in low visi...
A comprehensive and well-structured review on the application of deep learning (DL) based algorithms...
Millimeter-wave (mmW) radars are being increasingly integrated in commercial vehicles to support new...
© Copyright 2006 IEEESecondary data selection for estimation of the clutter covariance matrix in spa...
This paper presents an accurate, highly efficient, and learning-free method for large-scale odometry...
This tutorial provides an introduction to the application of knowledge-based processing to the gener...
International audienceSpace time Adaptive Processing (STAP) for airborne RADAR fits the context of a...
We train a deep learning artificial neural network model, Spatial Attention U-Net to recover useful ...
This dissertation focuses on statistical signal processing theory and its applications to radar, com...
Space-time adaptive processing (STAP) of multi-channel radar data is an established and powerful met...
High resolution automotive radar sensors are required in order to meet the high bar of autonomous ve...
We address the challenge of tracking an unknown number of targets in strong clutter environments usi...
mmWave radars have recently gathered significant attention as a means to track human movement within...
Traditional radar space-time adaptive processing (STAP) cannot efficiently suppress heterogeneous cl...
Space-time adaptive processing (STAP) is an important airborne radar technique used to improve targe...
Recent research has shown the effectiveness of mmWave radar sensing for object detection in low visi...
A comprehensive and well-structured review on the application of deep learning (DL) based algorithms...
Millimeter-wave (mmW) radars are being increasingly integrated in commercial vehicles to support new...
© Copyright 2006 IEEESecondary data selection for estimation of the clutter covariance matrix in spa...
This paper presents an accurate, highly efficient, and learning-free method for large-scale odometry...
This tutorial provides an introduction to the application of knowledge-based processing to the gener...
International audienceSpace time Adaptive Processing (STAP) for airborne RADAR fits the context of a...
We train a deep learning artificial neural network model, Spatial Attention U-Net to recover useful ...
This dissertation focuses on statistical signal processing theory and its applications to radar, com...