2022
DOI: 10.1017/s0373463322000236
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Robust stereo visual odometry: A comparison of random sample consensus algorithms based on three major hypothesis generators

Abstract: Almost all robust stereo visual odometry work uses the random sample consensus (RANSAC) algorithm for model estimation with the existence of noise and outliers. To date, there have been few comparative studies to evaluate the performance of RANSAC algorithms based on different hypothesis generators. In this work, we analyse and compare three popular and efficient RANSAC schemes. They mainly differ in using the two-dimensional (2-D) data points measured directly and the three-dimensional (3-D) data points infer… Show more

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Cited by 4 publications
(2 citation statements)
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“…Such disturbances can lead to mismatches of features, which can introduce substantial inaccuracies in pose estimations. To address this, the random sample consensus (RANSAC) algorithm [31] is adopted for outlier removal. Drawing from the set of feature points extracted in Section 3.1, a subset is randomly sampled to compute a motion model, serving as a hypothesis.…”
Section: Feature Matchingmentioning
confidence: 99%
“…Such disturbances can lead to mismatches of features, which can introduce substantial inaccuracies in pose estimations. To address this, the random sample consensus (RANSAC) algorithm [31] is adopted for outlier removal. Drawing from the set of feature points extracted in Section 3.1, a subset is randomly sampled to compute a motion model, serving as a hypothesis.…”
Section: Feature Matchingmentioning
confidence: 99%
“…In the context of SLAM systems, Guo et al introduced an improved algorithm based on enhanced image gradient information for the Scale-Invariant Feature Transform (SIFT) feature matching algorithm. The front-end of the SLAM system, responsible for ground feature measurement and approximate position calculations, was enhanced by this algorithm, effectively improving the accuracy of SIFT feature matching [14]. Furthermore, Wisth proposed a factor graph optimization (FGO) method for state estimation in legged robots, aiming to surpass the performance of kinematic-inertial odometry.…”
Section: Introductionmentioning
confidence: 99%