Journal Article10.1109/TITS.2017.2685433
A Framework for Fast and Robust Visual Odometry
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TL;DR: Experimental results based on the KITTI odometry data set show that the proposed technique outperforms the state-of-the-art visual odometry methods by producing more accurate ego-motion estimation in notably lesser amount of time.
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Abstract: Knowledge of the ego-vehicle’s motion state is essential for assessing the collision risk in advanced driver assistance systems or autonomous driving. Vision-based methods for estimating the ego-motion of vehicle, i.e., visual odometry, face a number of challenges in uncontrolled realistic urban environments. Existing solutions fail to achieve a good tradeoff between high accuracy and low computational complexity. In this paper, a framework for ego-motion estimation that integrates runtime-efficient strategies with robust techniques at various core stages in visual odometry is proposed. First, a pruning method is employed to reduce the computational complexity of Kanade–Lucas–Tomasi (KLT) feature detection without compromising on the quality of the features. Next, three strategies, i.e., smooth motion constraint, adaptive integration window technique, and automatic tracking failure detection scheme, are introduced into the conventional KLT tracker to facilitate generation of feature correspondences in a robust and runtime efficient way. Finally, an early termination condition for the random sample consensus (RANSAC) algorithm is integrated with the Gauss–Newton optimization scheme to enable rapid convergence of the motion estimation process while achieving robustness. Experimental results based on the KITTI odometry data set show that the proposed technique outperforms the state-of-the-art visual odometry methods by producing more accurate ego-motion estimation in notably lesser amount of time.
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Citations
A review of visual SLAM methods for autonomous driving vehicles
TL;DR: In this paper , the state-of-the-art studies of visual and visual-based (i.e., visual-inertial, visual-LIDAR, visual LIDAR-IMU) SLAM are completely reviewed, as well the positioning accuracy of previous work are compared with the well-known frameworks on the public datasets.
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ACK-MSCKF: Tightly-Coupled Ackermann Multi-State Constraint Kalman Filter for Autonomous Vehicle Localization.
TL;DR: A tightly-coupled Ackermann visual-inertial odometry (ACK-MSCKF) is proposed to fuse Ack Bermann error state measurements and the Stereo Multi-State Constraint Kalman Filter with a tightly- coupled filter-based mechanism to improve pose estimation accuracy.
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•Posted Content
Evolution of Visual Odometry Techniques.
TL;DR: An attempt is made to introduce this topic for beginners covering different aspects of vision based motion estimation task and a list of different datasets for visual odometry and allied research areas are provided for a ready reference.
Monocular Visual-Inertial-Wheel Odometry Using Low-Grade IMU in Urban Areas
TL;DR: In this paper , an extended Kalman filter is used to fuse visual-inertial measurements for land vehicles in a challenging urban environment in which a GNSS signal is not available nor reliable.
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•Posted Content
A Review of Visual Odometry Methods and Its Applications for Autonomous Driving
Kai Li Lim,Thomas Bräunl +1 more
TL;DR: This review covers visual odometry in their monocular, stereoscopic and visual-inertial form, individually presenting them with analyses related to their applications and suggesting future work suggestions to aid prospective developments inVisual odometry.
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