桃果实现场品质评价的计算机视觉系统初步研究

G. Bortolotti, D. Mengoli, M. Piani, L. C. Grappadelli, L. Manfrini
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引用次数: 1

摘要

在意大利,人们根据桃子的大小、颜色和外观来支付报酬。实时的水果收获质量信息可以帮助果农和整个水果链改善消费者的细分选择,增加果农的收入。在本研究中,测试了一种计算机视觉系统,目的是在收获季节对箱子中的桃子进行量化和分级。测试了两种不同深度的摄像头,英特尔RealSense D435i和D455,以及两种不同的光线条件,自然和人工,以评估潜在的问题,并为未来的发展实现最合适的设置。自动水果检测似乎不那么困难,但系统普遍存在对水果大小的高估。D435i相机在人工光条件下获得的结果最好,与测量果实的参考直径相比RMSE为17.91 mm。虽然所获得的结果准确度和精密度较低,但视觉系统技术似乎很有前途,并提出了进一步改进的解决方案。未来的研究将集中于改进尺寸和颜色估计系统,并直接与现场的地理参考数据相结合,以绘制现场质量变异性。这个想法是开发一种低成本的工具,与收获平台相结合,将收获时的水果质量与收获后的操作联系起来。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A computer vision system for in-field quality evaluation: preliminary results on peach fruit
In Italy, peaches are paid according to size, color and appearance. Real time fruit harvest quality information could support growers and the whole fruit chain improving segmented selection for consumers as well as to increase growers' income. In this study, a computer vision system was tested aiming to quantifying and sizing peaches in bins at harvest time. Two different depth cameras the Intel RealSense D435i and D455, and two different light conditions, natural and artificial, were tested, to assess potential issues and to achieve the most suitable set-up for future developments. Automated fruit detection appeared less difficult, while the system presents generally overestimation in fruit size. The D435i camera in artificial light condition obtained the best outcome with a RMSE of 17.91 mm, compared to the reference diameter of measured fruit. Although the results obtained are with low accuracy and precision, the vision systems technique seems promising and suggests solutions to further improvements. Future studies will focus on improving the system for sizing and color estimation, coupled to georeferenced data directly in the field with the aim of mapping field quality variability. The idea is to develop a low-cost tool that coupled to harvesting platforms connects fruit quality at the time of harvest to post-harvest operations.
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