Abstract

Precise localization of occluded fruits is crucial and challenging for robotic harvesting in orchards. Occlusions from leaves, branches, and other fruits make the point cloud acquired from Red Green Blue Depth (RGBD) cameras incomplete. Moreover, an insufficient filling rate and noise on depth images of RGBD cameras usually happen in the shade from occlusions, leading to the distortion and fragmentation of the point cloud. These challenges bring difficulties to position locating and size estimation of fruit for robotic harvesting. In this paper, a novel 3D fruit localization method is proposed based on a deep learning segmentation network and a new frustum-based point-cloud-processing method. A one-stage deep learning segmentation network is presented to locate apple fruits on RGB images. With the outputs of masks and 2D bounding boxes, a 3D viewing frustum was constructed to estimate the depth of the fruit center. By the estimation of centroid coordinates, a position and size estimation approach is proposed for partially occluded fruits to determine the approaching pose for robotic grippers. Experiments in orchards were performed, and the results demonstrated the effectiveness of the proposed method. According to 300 testing samples, with the proposed method, the median error and mean error of fruits’ locations can be reduced by 59% and 43%, compared to the conventional method. Furthermore, the approaching direction vectors can be correctly estimated.

Highlights

  • Intelligent Equipment Research Center, Beijing Academy of Agriculture and Forestry Sciences, BIPT Academy of Artificial Intelligence, Beijing Institute of Petrochemical Technology, Beijing 102617, China; School of Agricultural Engineering, Jiangsu University, Zhenjiang 212013, China

  • This paper investigated the problem of apple fruits’ localization for harvesting robots under occluded conditions

  • A network for apple fruit target instance segmentation and a frustum-based processing pipeline for point clouds generated from Red Green Blue Depth (RGBD) images were proposed in this paper

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Summary

Introduction

Precise localization of occluded fruits is crucial and challenging for robotic harvesting in orchards. Occlusions from leaves, branches, and other fruits make the point cloud acquired from Red. Green Blue Depth (RGBD) cameras incomplete. An insufficient filling rate and noise on depth images of RGBD cameras usually happen in the shade from occlusions, leading to the distortion and fragmentation of the point cloud. These challenges bring difficulties to position locating and size estimation of fruit for robotic harvesting. For a harvesting robot, locating fruits is one of the most challenging tasks of robotic perception in the complicated orchard environment. The environmental factors affect the accuracy and robustness of stereo perception published maps and institutional affiliations

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