2019
DOI: 10.1177/0020294019847712
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Pose detection of parallel robot based on improved RANSAC algorithm

Abstract: For the factors of complex image background, unobvious end-effector characteristics and uneven illumination in the pose detection of parallel robot based on binocular vision, the detection speed, and accuracy cannot meet the requirement of the closed-loop control. So a pose detection method based on improved RANSAC algorithm is presented. First, considering that the image of parallel robot is rigid and has multiple corner points, the Harris–Scale Invariant Feature Transform algorithm is adopted to realize imag… Show more

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Cited by 9 publications
(5 citation statements)
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References 27 publications
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“…The parallel aspect of the robot is not related to its geometric appearance but to the fact that several actuators could work in parallel, affecting the platform at the same time. In [ 71 ], the authors present a system that employs Harris-SIFT [ 72 ] and RANSAC to detect the pose of a parallel robot with three degrees of freedom which was developed by them. Harris-SIFT combines the Harris corner detection algorithm with SIFT, but their results could contain mismatches that are tackled by the RANSAC step.…”
Section: Applicationsmentioning
confidence: 99%
“…The parallel aspect of the robot is not related to its geometric appearance but to the fact that several actuators could work in parallel, affecting the platform at the same time. In [ 71 ], the authors present a system that employs Harris-SIFT [ 72 ] and RANSAC to detect the pose of a parallel robot with three degrees of freedom which was developed by them. Harris-SIFT combines the Harris corner detection algorithm with SIFT, but their results could contain mismatches that are tackled by the RANSAC step.…”
Section: Applicationsmentioning
confidence: 99%
“…To obtain the depth and color features of the fruit clusters, two cameras are used to obtain RGB images of the stacked fruit clusters, and the camera calibration method based on a single calibration plate is used [25,26]. Under the same lighting conditions, compared with other regions, the protruding and smooth region of the berry ball in the optical axis direction is more likely to be white in the image due to overexposure.…”
Section: Image Acquisition and Processingmentioning
confidence: 99%
“…With the MMLESAC plane fitting technique, we improved depth segmentation over existing MLESAC and RANSAC methods. MLESAC [31][32][33][34] follows RANSAC's [35][36][37][38][39][40] basic idea which produces hypothetical results based on consecutive marginal correspondence sets; in contrast, the other remaining correspondences are used to check the quality of the hypothesis. Although, based on the probabilistic approach, MLESAC evaluates via the random sampling hypothesis, it does not presume any such complexity in the earlier matching stage which is used to provide its data.…”
Section: Multi-objects Segmentation Using Mmlesacmentioning
confidence: 99%