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Journal ArticleDOI

Linear Least Squares Approach for Accurate Received Signal Strength Based Source Localization

Hing Cheung So, +1 more
- 01 Aug 2011 - 
- Vol. 59, Iss: 8, pp 4035-4040
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TLDR
It is proved that the performance of the improved LLS estimator achieves Cramer-Rao lower bound at sufficiently small noise conditions and the variances of the position estimates are derived and confirmed by computer simulations.
Abstract
A conventional approach for passive source localization is to utilize signal strength measurements of the emitted source received at an array of spatially separated sensors. The received signal strength (RSS) information can be converted to distance estimates for constructing a set of circular equations, from which the target position is determined. Nevertheless, a major challenge in this approach lies in the shadow fading effect which corresponds to multiplicative measurement errors. By utilizing the mean and variance of the squared distance estimates, we devise two linear least squares (LLS) estimators for RSS-based positioning in this paper. The first one is a best linear unbiased estimator while the second is its improved version by exploiting the known relation between the parameter estimates. The variances of the position estimates are derived and confirmed by computer simulations. In particular, it is proved that the performance of the improved LLS estimator achieves Cramer-Rao lower bound at sufficiently small noise conditions.

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Journal ArticleDOI

Cooperative Received Signal Strength-Based Sensor Localization With Unknown Transmit Powers

TL;DR: A novel semidefinite programming (SDP) relaxation technique is derived by converting the ML minimization problem into a convex problem which can be solved efficiently and requires only an estimate of the path loss exponent (PLE).
Journal ArticleDOI

On Received-Signal-Strength Based Localization with Unknown Transmit Power and Path Loss Exponent

TL;DR: This letter derives a weighed least squares (WLS) formulation to jointly estimate the sensor node location and the transmit power, based on the unscented transformation (UT) for the case of unknown transmit power and unknown PLE.
Book ChapterDOI

Source Localization: Algorithms and Analysis

TL;DR: This chapter contains sections titled: Introduction Measurement Models and Principles for source Localization Algorithms for Source Localization Performance Analysis for LocalizationAlgorithms and Conclusion.
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Multiple Source Localization in Wireless Sensor Networks Based on Time of Arrival Measurement

TL;DR: This work considers simultaneous estimation of source-measurement associations and the source locations, in addition to finding the initial signal transmission time and proposes an efficient three-step algorithm that progressively simplifies the original problem through convex relaxation and sensible approximations.
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BLE Beacons for Indoor Positioning at an Interactive IoT-Based Smart Museum

TL;DR: Experimental results on distance estimation, location, and detection accuracy show that BLE beacon is a promising solution for an interactive smart museum.
References
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Patent

Time delay estimation

TL;DR: In this article, a time differential is estimated between a plurality of signals by determining a filter response of a first electrical signal with a first filter array, determining a filtering response of the second electrical signal using a second filter array.
Journal ArticleDOI

An Accurate Algebraic Closed-Form Solution for Energy-Based Source Localization

TL;DR: The first-order analytical results show that the proposed solution reaches the Cramer-Rao lower bound (CRLB) accuracy for Gaussian noise as the signal-to-noise ratio tends to infinity.
Journal ArticleDOI

Best linear unbiased estimator approach for time-of-arrival based localisation

TL;DR: In this article, the best linear unbiased estimator (BLUE) version of the LLS algorithm will give identical estimation performance as long as the linear equations correspond to the independent set.
Proceedings ArticleDOI

On ML estimation for automatic RSS-based indoor localization

TL;DR: It is found that channel estimation via simple linear regression combined with ML localization has the potential to achieve good accuracy while keeping a very low level of computational and implementation complexity.
Proceedings ArticleDOI

A new positioning technique for RSS-Based localization based on a weighted least squares estimator

TL;DR: This paper proposes the use of a weighted least squares estimator to calculate the position of a mobile node in RSS-based localization systems for ad hoc networks that outperforms the traditional positioning algorithms in terms of localization accuracy and robustness to inaccuracy in the channel model.
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