Abstract

Many signals appear fractal and have self-similarity over a large range of their power spectral densities. They can be described by so-called Hermite processes, among which the first order one is called fractional Brownian motion (fBm), and has a wide range of applications. The fractional Gaussian noise (fGn) series is the successive differences between elements of a fBm series; they are stationary and completely characterized by two parameters: the variance, and the Hurst coefficient (H). From physical considerations, the fGn could be used to model the noise of observations coming from sensors working with, e.g., phase differences: due to the high recording rate, temporal correlations are expected to have long range dependency (LRD), decaying hyperbolically rather than exponentially. For the rigorous testing of deformations detected with terrestrial laser scanners (TLS), the correct determination of the correlation structure of the observations is mandatory. In this study, we show that the residuals from surface approximations with regression B-splines from simulated TLS data allow the estimation of the Hurst parameter of a known correlated input noise. We derive a simple procedure to filter the residuals in the presence of additional white noise or low frequencies. Our methodology can be applied to any kind of residuals, where the presence of additional noise and/or biases due to short samples or inaccurate functional modeling make the estimation of the Hurst coefficient with usual methods, such as maximum likelihood estimators, imprecise. We demonstrate the feasibility of our proposal with real observations from a white plate scanned by a TLS.

Highlights

  • Terrestrial laser scanners (TLS) capture a large amount of 3D points rapidly, with high precision and spatial resolution [1]

  • We show that the residuals from surface approximations with regression B-splines from simulated terrestrial laser scanners (TLS) data allow the estimation of the Hurst parameter of a known correlated input noise

  • We will combine all the mathematical developments presented in the previous sections: surface fitting and Hurst exponent estimation

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Summary

Introduction

Terrestrial laser scanners (TLS) capture a large amount of 3D points rapidly, with high precision and spatial resolution [1]. No rigorous statistical test for deformation can be performed with the raw PC [2] These drawbacks can be circumvented by approximating the PC with mathematical surfaces [3]. The correlation parameters were estimated by fitting the residuals of the approximation with an autoregressive function of the first order (AR(1)) (iii) the methodology could be made more general: it is based on a calibrated object scanned in a controlled environment In this contribution, we propose to address these drawbacks and to derive a general methodology to assess the correlation structure of the TLS range measurements. We conclude with a real case study and some recommendations

Functional Model
First Step
Third Step
The Cartesian Residuals
The Polar Residuals
Variance
Correlation Structure for Range Measurements
What is a fGn?
Generation of fGn
How to Estimate the Hurst Parameter
Butterworth Filter
Simulations and Results
Simulation of TLS Observations
Noise Simulation
Estimation of the Hurst Exponent from the Residuals
Impact of Model Misspecification
Impact of Model Misspecification and Noise Angle
Sensitivity Analysis
Small Samples
Result for Gaussian Surface
Application to Real Data
Conclusions
Full Text
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