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Vision-based Distance Measurement and Localization for Automated Driving : 자율주행을 위한 카메라 기반 거리 측정 및 측위

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dc.contributor.advisor서승우-
dc.contributor.author유인섭-
dc.date.accessioned2017-10-27T16:44:09Z-
dc.date.available2017-10-27T16:44:09Z-
dc.date.issued2017-08-
dc.identifier.other000000145031-
dc.identifier.urihttps://hdl.handle.net/10371/136829-
dc.description학위논문 (박사)-- 서울대학교 대학원 공과대학 전기·컴퓨터공학부, 2017. 8. 서승우.-
dc.description.abstractAutomated driving vehicles or advanced driver assistance systems (ADAS) have continued to be an important research topic in transportation area. They can promise to reduce road accidents and eliminate traffic congestions. Automated driving vehicles are composed of two parts. On-board sensors are used to observe the environments and then, the captured sensor data are processed to interpret the environments and to make appropriate driving decisions. Some sensors have already been widely used in
existing driver-assistance systems, e.g., camera systems are used in lane-keeping systems to recognize lanes on roads
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dc.description.abstractradars (Radio Detection And Ranging) are used in
adaptive cruise systems to measure the distance to a vehicle ahead such that a safe distance can be guaranteed
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dc.description.abstractLIDAR (Light Detection And Ranging) sensors are used in the autonomous emergency braking system to detect other vehicles or pedestrians in the vehicle path to avoid collision-
dc.description.abstractaccelerometers are used to measure vehicle speed changes, which are especially useful for air-bags-
dc.description.abstractwheel encoder sensors are used to measure wheel rotations in a vehicle anti-lock brake system and GPS sensors are embedded on vehicles to provide the global positions of the vehicle for path navigation.
In this dissertation, we cover three important application for automated driving vehicles by using camera sensors in vehicular environments. Firstly, precise and robust distance measurement is one of the most important requirements for driving assistance
systems and automated driving systems. We propose a new method for providing accurate distance measurements through a frequency-domain analysis based on a stereo
camera by exploiting key information obtained from the analysis of captured images. Secondly, precise and robust localization is another important requirement for safe automated driving. We propose a method for robust localization in diverse driving situations that measures the vehicle positions using a camera with respect to a given map for vision based navigation. The proposed method includes technology for removing dynamic objects and preserving features in vehicular environments using a
background model accumulated from previous frames and we improve image quality using illuminant invariance characteristics of the log-chromaticity. We also propose
a vehicle localization method using structure tensor and mutual information theory. Finally, we propose a novel algorithm for estimating the drivable collision-free space for autonomous navigation of on-road vehicles. In contrast to previous approaches that use stereo cameras or LIDAR, we solve this problem using a sensor fusion of cameras and LIDAR.
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dc.description.tableofcontents1 Introduction 1
1.1 Background and Motivations 1
1.2 Contributions and Outline of the Dissertation 3
1.2.1 Accurate Object Distance Estimation based on Frequency-Domain Analysis with a Stereo Camera 3
1.2.2 Visual Map Matching based on Structural Tensor and Mutual Information using 3D High Resolution Digital Map 3
1.2.3 Free Space Computation using a Sensor Fusion of LIDAR and RGB camera in Vehicular Environment 4
2 Accurate Object Distance Estimation based on Frequency-Domain Analysis with a Stereo Camera 5
2.1 Introduction 5
2.2 Related Works 7
2.3 Algrorithm Description 10
2.3.1 Overall Procedure 10
2.3.2 Preliminaries 12
2.3.3 Pre-processing 12
2.4 Frequency-domain Analysis 15
2.4.1 Procedure 15
2.4.2 Contour-based Cost Computation 20
2.5 Cost Optimization and Distance Estimation 21
2.5.1 Disparity Optimization 21
2.5.2 Post-processing and Distance Estimation 23
2.6 Experimental Results 24
2.6.1 Test Environment 24
2.6.2 Experiment on KITTI Dataset 25
2.6.3 Performance Evaluation and Analysis 28
2.7 Conclusion 32
3 Visual Map Matching Based on Structural Tensor and Mutual Information using 3D High Resolution Digital Map 33
3.1 Introduction 33
3.2 Related Work 35
3.3 Methodology 37
3.3.1 Sensor Calibration 37
3.3.2 Digital Map Generation and Synthetic View Conversion 39
3.3.3 Dynamic Object Removal 41
3.3.4 Illuminant Invariance 43
3.3.5 Visual Map Matching using Structure Tensor and Mutual Information 43
3.4 Experiments and Result 49
3.4.1 Methodology 49
3.4.2 Quantitative Results 53
3.5 Conclusions and Future Works 54
4 Free Space Computation using a Sensor Fusion of LIDAR and RGB Camera in Vehicular Environments 55
4.1 Introduction 55
4.2 Methodology 57
4.2.1 Dense Depth Map Generation 57
4.2.2 Color Distribution Entropy 58
4.2.3 Edge Extraction 60
4.2.4 Temporal Smoothness 61
4.2.5 Spatial Smoothness 62
4.3 Experiment and Evaluation 63
4.3.1 Evaluated Methods 63
4.3.2 Experiment on KITTI Dataset 64
4.4 Conclusion 68
5 Conclusion 70
Abstract (In Korean) 87
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dc.formatapplication/pdf-
dc.format.extent4808175 bytes-
dc.format.mediumapplication/pdf-
dc.language.isoen-
dc.publisher서울대학교 대학원-
dc.subjectAutomated driving-
dc.subjectdistance measurement-
dc.subjectFree space detection-
dc.subjectimage processing-
dc.subjectvehicle localization.-
dc.subject.ddc621.3-
dc.titleVision-based Distance Measurement and Localization for Automated Driving-
dc.title.alternative자율주행을 위한 카메라 기반 거리 측정 및 측위-
dc.typeThesis-
dc.contributor.AlternativeAuthorIn-Sub Yoo-
dc.description.degreeDoctor-
dc.contributor.affiliation공과대학 전기·컴퓨터공학부-
dc.date.awarded2017-08-
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