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Simulation of Automotive Radar Point Clouds in Standardized Frameworks.

By: Material type: TextTextPublisher: Göttingen : Cuvillier Verlag, 2021Copyright date: ©2021Edition: 1st edDescription: 1 online resource (127 pages)Content type:
  • text
Media type:
  • computer
Carrier type:
  • online resource
ISBN:
  • 9783736965362
Subject(s): Genre/Form: Additional physical formats: Print version:: Simulation of Automotive Radar Point Clouds in Standardized FrameworksDDC classification:
  • 621.3
LOC classification:
  • TL158 .E347 2021
Online resources:
Contents:
Intro -- Chapter 1 Autonomous driving andsimulational challenges -- 1.1 Safety validation and simulative test drives -- 1.2 Principles of automotive radar sensors -- 1.3 Modeling and standardized simulationframeworks -- Chapter 2 State of research in automotiveradar modeling -- 2.1 Differentiation of various modeling levels -- 2.2 Ray-tracing in environments of high-fidelity -- 2.3 Models executable in standardized environments -- 2.4 Validation and verification of sensor models -- Chapter 3 Derivation of research questions,hypotheses and objectives -- 3.2 Stochastic radar models based on deepgenerative networks -- 3.3 Hybrid multipurpose approaches for radar sensormodels -- 3.4 Deficiencies of current validation criteria -- Chapter 4 Modeling challenges related to raycone tracing -- 4.1 The caustic distance and the angular beamexpansion -- 4.2 Estimating current errors in case of multiplereflections -- 4.3 Consequences and lower bounds for the numberof rays -- Chapter 5 Approaches to statistical radar pointcloud simulation -- 5.1 Statistical formulation of radar sensor modeling -- 5.2 Kernel density estimation and radar point clouds -- 5.3 Deep generative networks as sensor models -- 5.4 Comparison of learning capacities and itsconsequences -- Chapter 6 A hybrid modeling approach forradar point clouds -- 6.1 Tracing and catching rays as the baseline -- 6.2 Improvements to the ray casting approach -- 6.3 Capabilities for data-based optimization -- 6.4 Bottom line on the hybrid modeling approach -- Chapter 7 Validation based on statisticalhypothesis testing -- 7.1 Consistency of validation criterion -- 7.2 On the Kolmogorov-Smirnov test -- 7.3 Applications to radar sensor models -- 7.4 Retrospective and future validation challenges -- Chapter 8 Conclusion and prospectivechallenges -- 8.1 Recap of the radar point cloud simulation.
8.2 Lessons learned and future recommendations -- Nomenclatur -- References -- Index.
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Intro -- Chapter 1 Autonomous driving andsimulational challenges -- 1.1 Safety validation and simulative test drives -- 1.2 Principles of automotive radar sensors -- 1.3 Modeling and standardized simulationframeworks -- Chapter 2 State of research in automotiveradar modeling -- 2.1 Differentiation of various modeling levels -- 2.2 Ray-tracing in environments of high-fidelity -- 2.3 Models executable in standardized environments -- 2.4 Validation and verification of sensor models -- Chapter 3 Derivation of research questions,hypotheses and objectives -- 3.2 Stochastic radar models based on deepgenerative networks -- 3.3 Hybrid multipurpose approaches for radar sensormodels -- 3.4 Deficiencies of current validation criteria -- Chapter 4 Modeling challenges related to raycone tracing -- 4.1 The caustic distance and the angular beamexpansion -- 4.2 Estimating current errors in case of multiplereflections -- 4.3 Consequences and lower bounds for the numberof rays -- Chapter 5 Approaches to statistical radar pointcloud simulation -- 5.1 Statistical formulation of radar sensor modeling -- 5.2 Kernel density estimation and radar point clouds -- 5.3 Deep generative networks as sensor models -- 5.4 Comparison of learning capacities and itsconsequences -- Chapter 6 A hybrid modeling approach forradar point clouds -- 6.1 Tracing and catching rays as the baseline -- 6.2 Improvements to the ray casting approach -- 6.3 Capabilities for data-based optimization -- 6.4 Bottom line on the hybrid modeling approach -- Chapter 7 Validation based on statisticalhypothesis testing -- 7.1 Consistency of validation criterion -- 7.2 On the Kolmogorov-Smirnov test -- 7.3 Applications to radar sensor models -- 7.4 Retrospective and future validation challenges -- Chapter 8 Conclusion and prospectivechallenges -- 8.1 Recap of the radar point cloud simulation.

8.2 Lessons learned and future recommendations -- Nomenclatur -- References -- Index.

Description based on publisher supplied metadata and other sources.

Electronic reproduction. Ann Arbor, Michigan : ProQuest Ebook Central, 2024. Available via World Wide Web. Access may be limited to ProQuest Ebook Central affiliated libraries.

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