2019
DOI: 10.1109/access.2019.2916190
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Orthogonality Index Based Optimal Feature Selection for Visual Odometry

Abstract: The performance of visual odometry is dependent upon the quality of features selected for computing the frame-to-frame transformation. In order to ensure the quality of selected features, conventional approaches consider the spatial distribution of the selected features, in addition to their counts and matching scores, in which a small number of features are selected randomly from each of the uniformly distributed buckets. In this paper, we show that features can be selected optimally, rather than randomly, us… Show more

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Cited by 9 publications
(1 citation statement)
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“…Both smoke and intense heat sources have a substantial impact on the environment, which may affect the feature extraction and description process as well. Furthermore, a uniform distribution of the features is desired for a more accurate estimation of the odometry [4]. Notably, in the benchmark from Mouats et al [3], which intends to apply feature extraction and description in thermal odometry estimation, a metric capable of quantifying the feature distribution across the frame is lacking.…”
Section: Thermal Feature Extraction and Matchingmentioning
confidence: 99%
“…Both smoke and intense heat sources have a substantial impact on the environment, which may affect the feature extraction and description process as well. Furthermore, a uniform distribution of the features is desired for a more accurate estimation of the odometry [4]. Notably, in the benchmark from Mouats et al [3], which intends to apply feature extraction and description in thermal odometry estimation, a metric capable of quantifying the feature distribution across the frame is lacking.…”
Section: Thermal Feature Extraction and Matchingmentioning
confidence: 99%