2018
DOI: 10.1590/s1982-21702018000200018
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Point Cloud Generation From Gaussian Decomposition of the Waveform Laser Signal With Genetic Algorithms

Abstract: Recent developments in LIDAR technology lead to the availability of the waveform systems, which capture and digitize the whole return of the emitted LASER pulse. As many objects may cause multiple returns in the same echo, one task is to detect and separate different echoes within the same digitized measurement. In this paper the results of a study aimed at LASER signal waveform decomposition using genetic algorithms are introduced. The proposed method is based on the Gaussian decomposition approach and analyz… Show more

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Cited by 1 publication
(2 citation statements)
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“…Consequently, the number of initially approximated Gaussian components is equal to the number of OPs, and the estimated peaks (EPs) of each component are derived. The fitness of an approximated Gaussian mixture model is typically evaluated using residual-based measures, such as the error ratio [31]. In this study, R 2 is used to measure the residual between the original waveform (y) and approximated Gaussian mixture model ( ŷ):…”
Section: Progressive Gaussian Decompositionmentioning
confidence: 99%
See 1 more Smart Citation
“…Consequently, the number of initially approximated Gaussian components is equal to the number of OPs, and the estimated peaks (EPs) of each component are derived. The fitness of an approximated Gaussian mixture model is typically evaluated using residual-based measures, such as the error ratio [31]. In this study, R 2 is used to measure the residual between the original waveform (y) and approximated Gaussian mixture model ( ŷ):…”
Section: Progressive Gaussian Decompositionmentioning
confidence: 99%
“…Linearly approximated iterative Gaussian decomposition (LAIGD) linearly estimates the degree of overlap between adjacent Gaussian components and performs Gaussian modeling according to the deformation impact rank by overlap [30]. Another flexible Gaussian decomposition method utilizes a genetic algorithm to estimate overlapping peaks that are not detected in the initial peak detection [31]. These flexible Gaussian decomposition approaches offer a general applicability regardless of waveform types or characteristics, facilitating the extraction of physical properties (waveform features) from each decomposed component.…”
Section: Introductionmentioning
confidence: 99%