Radar detection of small drones in presence of noise and clutter is considered from a differential geometry viewpoint. The drone detection problem is challenging due to low radar cross section (RCS) of drones, especially in cluttered environments and when drones fly low and slow in urban areas. This paper proposes two detection techniques, the Riemannian-Brauer matrix (RBM) and the angle-based hybrid-Brauer (ABHB), to improve the probability of drone detection under small sample size and low signal-to-clutter ratio (SCR). These techniques are based on the regularized Burg algorithm (RBA), the Brauer disc (BD) theorem, and the Riemannian mean and distance. Both techniques exploit the RBA to obtain a Toeplitz Hermitian positive definite (THPD...
This paper presents a shape feature aided target detection method for micro-drone surveillance radar...
Powered by technological advances, commercial drones have wide applications in areas such as photogr...
The commercialization of drones has granted the public with unprecedented access to unmanned aviatio...
The estimation of interference plus noise covariance (INC) matrix for beamforming applications is co...
In this thesis, we study the medians of a probability measure in a Riemannian manifold. Firstly, the...
This paper proposes a radar target detection algorithm based on information geometry. In particular,...
In this work, we show how drone detection and classification can be enabled by leveraging a database...
The increase in drone misuse by civilian apart from military applications is alarming and need to be...
The following paper aims at presenting new theoretical and algorithmic developments to the problem o...
Abstract Drones are widely used in the field of information gathering and tracking, even they could...
The problem of hypothesis testing in the Neyman–Pearson formulation is considered from a geometric v...
This paper deals with radar clutter statistical learning based on spatial Doppler fluctuation. In ar...
The deployment of a drone swarm from carrier aircraft can support critical operations in which targe...
Using the tools of category theory and differential geometry, we extend the geometric notions conseq...
This work studies binary classification problem for small airborne targets (drones vs other) by mean...
This paper presents a shape feature aided target detection method for micro-drone surveillance radar...
Powered by technological advances, commercial drones have wide applications in areas such as photogr...
The commercialization of drones has granted the public with unprecedented access to unmanned aviatio...
The estimation of interference plus noise covariance (INC) matrix for beamforming applications is co...
In this thesis, we study the medians of a probability measure in a Riemannian manifold. Firstly, the...
This paper proposes a radar target detection algorithm based on information geometry. In particular,...
In this work, we show how drone detection and classification can be enabled by leveraging a database...
The increase in drone misuse by civilian apart from military applications is alarming and need to be...
The following paper aims at presenting new theoretical and algorithmic developments to the problem o...
Abstract Drones are widely used in the field of information gathering and tracking, even they could...
The problem of hypothesis testing in the Neyman–Pearson formulation is considered from a geometric v...
This paper deals with radar clutter statistical learning based on spatial Doppler fluctuation. In ar...
The deployment of a drone swarm from carrier aircraft can support critical operations in which targe...
Using the tools of category theory and differential geometry, we extend the geometric notions conseq...
This work studies binary classification problem for small airborne targets (drones vs other) by mean...
This paper presents a shape feature aided target detection method for micro-drone surveillance radar...
Powered by technological advances, commercial drones have wide applications in areas such as photogr...
The commercialization of drones has granted the public with unprecedented access to unmanned aviatio...