Proceedings of the 6th IIAE International Conference on Industrial Application Engineering 2018 2018
DOI: 10.12792/iciae2018.050
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Visual Odometry from Floor Images by using Accelerated KAZE Features

Abstract: For the estimation of self-position in an autonomous robot, there is a requirement to measure the two-dimensional movement. Therefore, a self-position estimation method using the floor image photographed with a CCD camera is proposed. In this paper, the self-position is estimated by detected keypoints from the image photographed before and after movement. AKAZE is used for the extraction of the features. Using the extracted existing frame by the past movement prediction, the movement position of 1 frame ahead … Show more

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“…However, the descriptor-matching method may lose the keypoints detected from the landmarks if sight of the landmark is lost, which could be affected by illumination. Therefore, based on our previous study [20], a self-localization method using feature points extracted from floor images by accelerated KAZE features (AKAZE) is proposed for movement prediction. As a method of feature point matching, the position after the movement of the feature point before movement is predicted from the movement result of the previous frame.…”
Section: Introductionmentioning
confidence: 99%
“…However, the descriptor-matching method may lose the keypoints detected from the landmarks if sight of the landmark is lost, which could be affected by illumination. Therefore, based on our previous study [20], a self-localization method using feature points extracted from floor images by accelerated KAZE features (AKAZE) is proposed for movement prediction. As a method of feature point matching, the position after the movement of the feature point before movement is predicted from the movement result of the previous frame.…”
Section: Introductionmentioning
confidence: 99%