Strawberry picking point localization ripeness and weight estimation

Alessandra Tafuro, Adeayo Adewumi, Soran Parsa, Ghalamzan E. Amir, Bappaditya Debnath
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引用次数: 4

Abstract

Labour shortage, difficulties in labour management, the digitalization of fruit production pipeline to reduce the fruit production costs have made robotic systems for selective harvesting of strawberries an important industry and academic research. One of the important components of such technologies yet to be developed is fruit picking perception. For picking strawberries, a robot needs to infer the location of picking points from the images of strawberries. Moreover, the size and weight of strawberries to be picked can help the robot to place the picked strawberries in proper punnets directly to be delivered to customers in supermarkets. This can save significant time and packing costs in packhouses. Geometry-based approaches are the most common approach to determine the picking point but they suffer from inaccuracies due to noise, occlusion, and varying shape and orientation of the berries. In contrast, we present two novel datasets of strawberries annotated with picking points, key-points (such as the shoulder points, the contact point between the calyx and flesh, and the point on the flesh farthest from the calyx), and the weight and size of the berries. We performed experiments with Detectron-2, which is an extended version of Mask-RCNN with key-points detection capability. The results show that the key-points detection approach works well for picking and grasping point localization. The second dataset also presents the dimensions and weight of strawberries. Our novel baseline model for weight estimation outperforms many state-of-the-art deep networks. The datasets and annotations are available at https://github.com/imanlab/strawberry-pp-w-r-dataset.
草莓采摘点定位、成熟度及重量估算
劳动力短缺、劳动力管理困难、水果生产流水线数字化以降低水果生产成本,使得草莓选择性采收机器人系统成为重要的产业和学术研究。这种技术的重要组成部分之一是尚未开发的水果采摘感知。对于采摘草莓,机器人需要从草莓的图像中推断出采摘点的位置。此外,要采摘的草莓的大小和重量可以帮助机器人将采摘的草莓放在合适的篮子里,直接送到超市的顾客手中。这可以节省大量的时间和包装成本。基于几何的方法是确定采摘点的最常用方法,但由于噪声,遮挡以及浆果形状和方向的变化,它们存在不准确性。相比之下,我们提出了两个新的草莓数据集,这些数据集标注了采摘点、关键点(如肩点、花萼和果肉之间的接触点、离花萼最远的果肉上的点)以及浆果的重量和大小。我们用Detectron-2进行了实验,它是Mask-RCNN的扩展版本,具有关键点检测功能。结果表明,该关键点检测方法能够很好地实现抓取点定位。第二个数据集也显示了草莓的尺寸和重量。我们的新基线模型的权重估计优于许多最先进的深度网络。数据集和注释可在https://github.com/imanlab/strawberry-pp-w-r-dataset上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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