2023
DOI: 10.3390/agriculture13071405
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Tea Bud Detection and 3D Pose Estimation in the Field with a Depth Camera Based on Improved YOLOv5 and the Optimal Pose-Vertices Search Method

Abstract: The precise detection and positioning of tea buds are among the major issues in tea picking automation. In this study, a novel algorithm for detecting tea buds and estimating their poses in a field environment was proposed by using a depth camera. This algorithm introduces some improvements to the YOLOv5l architecture. A Coordinate Attention Mechanism (CAM) was inserted into the neck part to accurately position the elements of interest, a BiFPN was used to enhance the small object detection ability, and a Ghos… Show more

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Cited by 2 publications
(1 citation statement)
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“…The point cloud algorithm can effectively solve the error caused by occlusion, and by analyzing and detecting the point cloud in the target area, the amount of data is reduced, greatly improving the positioning speed. Chen et al [51] combined the proposed detection model with OPVSM to provide a reliable and effective method for tea bud detection and pose estimation. This study has the potential to be used in tea picking automation and can be extended to other crops and objects for precision agriculture and robotic applications.…”
Section: Target Recognition and Localizationmentioning
confidence: 99%
“…The point cloud algorithm can effectively solve the error caused by occlusion, and by analyzing and detecting the point cloud in the target area, the amount of data is reduced, greatly improving the positioning speed. Chen et al [51] combined the proposed detection model with OPVSM to provide a reliable and effective method for tea bud detection and pose estimation. This study has the potential to be used in tea picking automation and can be extended to other crops and objects for precision agriculture and robotic applications.…”
Section: Target Recognition and Localizationmentioning
confidence: 99%