2018
DOI: 10.3390/s18072185
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Toward a More Complete, Flexible, and Safer Speed Planning for Autonomous Driving via Convex Optimization

Abstract: In this paper, we present a complete, flexible and safe convex-optimization-based method to solve speed planning problems over a fixed path for autonomous driving in both static and dynamic environments. Our contributions are five fold. First, we summarize the most common constraints raised in various autonomous driving scenarios as the requirements for speed planner developments and metrics to measure the capacity of existing speed planners roughly for autonomous driving. Second, we introduce a more general, … Show more

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Cited by 31 publications
(15 citation statements)
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“…In order to further improve the robustness, reference [34] used a probabilistic map represented as Gaussian distribution over remittance values instead of the previous ground map represented as fixed infrared remittance values. It enables the stationary objects and consistent angular reflectivity in the map to be quickly ~0.5 [23], [24] Localisation Expected millisecondlevel [3] Judgement Planning and decision making ~0.1-0.2 [25], [26] Reaction Execution ~0.1 [27], [28] identified by Bayesian inference. Then they used offline SLAM to align the overlapping trajectories in previous sequential map, which makes the localisation system keep learning and improving maps.…”
Section: A Lidar-based Localisationmentioning
confidence: 99%
“…In order to further improve the robustness, reference [34] used a probabilistic map represented as Gaussian distribution over remittance values instead of the previous ground map represented as fixed infrared remittance values. It enables the stationary objects and consistent angular reflectivity in the map to be quickly ~0.5 [23], [24] Localisation Expected millisecondlevel [3] Judgement Planning and decision making ~0.1-0.2 [25], [26] Reaction Execution ~0.1 [27], [28] identified by Bayesian inference. Then they used offline SLAM to align the overlapping trajectories in previous sequential map, which makes the localisation system keep learning and improving maps.…”
Section: A Lidar-based Localisationmentioning
confidence: 99%
“…The work provides a complete navigation system for test scenario and two flexible routing algorithms are also proposed. The research work in reference [25] aims to solve the speed planning problems for autonomous vehicles. After summarizing the existing constraints in the speed planning, the work proposes a mathematical model for a general speed planning of autonomous vehicles based on the summarized constraints.…”
Section: Related Workmentioning
confidence: 99%
“…The creation of 3D models from the captured shape and appearance of objects is known as 3D reconstruction. It is a widely researched topic in areas such as computer graphics [1] and computer vision [2], and has recently gained attention in others, namely robotics [3], autonomous driving [4], medical applications [5], cultural heritage [6] and agriculture [7].…”
Section: Introductionmentioning
confidence: 99%