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Fruit Visibility Analysis for Robotic Citrus Harvesting

机译:机器人柑橘收获的果实可见性分析

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摘要

Automating orange harvesting in Florida could support the citrus industry in the face of a decreasing labor force and global market competition. Fruit recognition is the first critical operation in robotic harvesting, and fruit visibility in the tree canopy poses a challenge to fruit detection. Fruit trees such as oranges have a dense canopy, which can often result in partial or complete occlusion of fruit. Fruit visibility and approaches to increase visibility of oranges by viewing the canopy with different camera perspectives were investigated. Fruit visibility was defined as the ratio of the number of fruits visible to a human observer to the total number of fruits inside a region of interest (ROI), which was a volume of tree canopy enclosed by a 0.125 m 3 bounding cube. Multiple images of ROIs were acquired using two methods: orthographic viewing and multiple-perspective viewing. Orthographic viewing involved taking the six orthographic views perpendicular to the ROI faces, while multiple-perspective viewing acquired nine different perspectives at combinations of 45° angles to the ROI's front face. Sets of orthographic and multiple-perspective images were obtained from a commercial orange grove located in Florida. Combining visible fruit from multiple-perspective images yielded a fruit visibility of 0.91 compared to 0.82 from combined orthographic images. In addition, an image processing fruit recognition algorithm detected 0.87 of the visible fruits in the ROI using the multiple-perspective images. These fruit visibility levels show a substantial improvement compared to results from previous literature, which reported 0.40 to 0.70 fruit visibility for citrus trees. Integrating the multiple-perspective viewing approach into a fruit exploration function of a harvesting robot could improve overall harvesting efficiency
机译:面对劳动力减少和全球市场竞争,佛罗里达州的橙色采摘自动化可以为柑橘产业提供支持。水果识别是机器人收获中的第一个关键操作,树冠中的水果可见度对水果检测提出了挑战。果树(例如桔子)的树冠密实,通常会导致部分或完全闭塞水果。研究了水果的可见度和通过用不同的摄像机视角观察顶篷来增加橘子可见度的方法。水果可见性定义为人类观察者可见的水果数量与目标区域(ROI)内水果总数的比率,该区域是被0.125 m 3 边界立方体。使用两种方法获取了ROI的多个图像:正射影像和多视角影像。正射影像观看涉及垂直于ROI面的六个正射影像,而多角度观察则以与ROI正面成45°角的组合获得了九个不同的视角。从位于佛罗里达州的商业橘园中获取正射影像和多视角影像集。结合多视角图像中的可见水果可获得0.91的水果可见度,而相比之下,组合正交图像中的可见度则为0.82。另外,图像处理水果识别算法使用多视角图像在ROI中检测到0.87可见水果。与以前的文献报道的结果相比,柑橘的果实可见度为0.40至0.70,与之前的文献结果相比,这些果实的可见度水平有显着提高。将多视角查看方法集成到收获机器人的水果探索功能中可以提高总体收获效率

著录项

  • 来源
    《Transactions of the ASABE》 |2009年第1期|p.277-283|共7页
  • 作者单位

    Duke M. Bulanon, ASABE Member Engineer, Postdoctoral Researcher, and Thomas F. Burks, ASABE Member Engineer, Associate Professor, Department of Agricultural and Biological Engineering, University of Florida, Gainesville, Florida;

    and Victor Alchanatis, ASABE Member Engineer, Research Scientist, Agricultural Research Organization, The Volcani Center, Bet Dagan, Israel. Corresponding author: Duke M. Bulanon, Department of Agricultural and Biological Engineering, University of Florida, Gainesville, FL 32611;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Citrus; Image processing; Machine vision; Robotic harvesting; Visibility;

    机译:柑橘;图像处理;机器视觉机器人收割;能见度;

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