The problem of target localization involves estimating the position of a target from multiple noisy sensor measurements. It is well known that the relative sensor-target geometry can significantly affect the performance of any particular localization algorithm. The localization performance can be explicitly characterized by certain measures, for example, by the Cramer-Rao lower bound (which is equal to the inverse Fisher information matrix) on the estimator variance. In addition, the Cramer-Rao lower bound is commonly used to generate a so-called uncertainty ellipse which characterizes the spatial variance distribution of an efficient estimate, i.e. an estimate which achieves the lower bound. The aim of this work is to identify those relati...
In this paper, we describes the information-theoretic approaches to sensor selection and sensor plac...
Source localization plays a key role in many applications including radar, wireless and underwater c...
Localization is a key application for sensor networks. We propose a Bayesian method to analyze the l...
In this paper we characterize the relative sensor-target geometry for bearing-only localization in R...
In this paper we characterize the relative sensor-target geom-etry in R2 in terms of potential local...
In this paper we characterize the bounds on localization accuracy in signal strength based localizat...
In this paper we characterize the relative sensor-target geometry for bearing-only localization in ℝ...
In this paper we characterize the relative sensor-target geometry in R2 in terms of potential locali...
This paper investigates the linear separation requirements for range sensors in order to achieve the...
In this paper we characterize the relative sensor-target geometry in ℝ2 in terms of potential locali...
This paper investigates the linear separation requirements for Angle-of-Arrival (AoA) and range sens...
This paper analytically characterizes optimal sensor placements for target localization and tracking...
This paper analytically characterizes optimal sensor placements for target localization and tracking...
In this paper, we examine the optimal linear separation requirements for AoA sensors, in order to ac...
In this paper, we describes the information-theoretic approaches to sensor selection and sensor plac...
In this paper, we describes the information-theoretic approaches to sensor selection and sensor plac...
Source localization plays a key role in many applications including radar, wireless and underwater c...
Localization is a key application for sensor networks. We propose a Bayesian method to analyze the l...
In this paper we characterize the relative sensor-target geometry for bearing-only localization in R...
In this paper we characterize the relative sensor-target geom-etry in R2 in terms of potential local...
In this paper we characterize the bounds on localization accuracy in signal strength based localizat...
In this paper we characterize the relative sensor-target geometry for bearing-only localization in ℝ...
In this paper we characterize the relative sensor-target geometry in R2 in terms of potential locali...
This paper investigates the linear separation requirements for range sensors in order to achieve the...
In this paper we characterize the relative sensor-target geometry in ℝ2 in terms of potential locali...
This paper investigates the linear separation requirements for Angle-of-Arrival (AoA) and range sens...
This paper analytically characterizes optimal sensor placements for target localization and tracking...
This paper analytically characterizes optimal sensor placements for target localization and tracking...
In this paper, we examine the optimal linear separation requirements for AoA sensors, in order to ac...
In this paper, we describes the information-theoretic approaches to sensor selection and sensor plac...
In this paper, we describes the information-theoretic approaches to sensor selection and sensor plac...
Source localization plays a key role in many applications including radar, wireless and underwater c...
Localization is a key application for sensor networks. We propose a Bayesian method to analyze the l...