Fruity: A Multi-modal Dataset for Fruit Recognition and 6D-Pose Estimation in Precision Agriculture

Mahmoud Abdulsalam, Zakaria Chekakta, N. Aouf, Maxwell Hogan
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Abstract

The application of robotic platforms for precision agriculture is gaining traction in modern research. However, the demand for a complete fruit dataset is still not satisfied. In this paper, we present fruity, a multi-modal fruit dataset with a variety of use cases such as 6D-pose estimation, fruit detection, fruit picking applications, etc. To the best of our knowledge, this dataset is the first-ever multi-modal fruit dataset tailored specifically for fruit 6D pose estimation in precision agriculture. The dataset is collected over a range of multiple sensors consisting of an RGB-D camera, thermal camera and an indoor tracking camera for ground truth poses. Fruity features RGB images, stereo depth images, thermal images, camera 6Dposes, fruit 6D-poses and relative 6D-poses between the cameras and fruits. The classes of the dataset are commonly harvested fruits which include: apples, oranges, bananas, avocados and lemons. It is also enriched with a clustered class to account for occlusion scenario. The dataset is recorded over multiple trajectories implemented with multiple platforms encompassing a robotic manipulator and an Unmanned Aerial Vehicle (UAV). The dataset alongside the documentation and utility tools is publicly available at: https://github.com/MahmoudYidi/Fruity.git.
Fruity:用于精准农业水果识别和6d姿态估计的多模态数据集
机器人平台在精准农业中的应用在现代研究中越来越受到关注。然而,对完整水果数据集的需求仍然没有得到满足。在本文中,我们提出了fruity,一个多模态水果数据集,具有各种用例,如6d姿态估计,水果检测,水果采摘应用等。据我们所知,该数据集是第一个专门为精准农业中的水果6D姿态估计量身定制的多模态水果数据集。该数据集是通过多个传感器收集的,包括RGB-D相机、热成像相机和用于地面真实姿势的室内跟踪相机。Fruity具有RGB图像、立体深度图像、热图像、相机6d -pose、水果6d -pose以及相机与水果之间的相对6d -pose。数据集的类别是通常收获的水果,包括:苹果、橙子、香蕉、鳄梨和柠檬。它还丰富了一个集群类来解释遮挡场景。该数据集记录在多个平台上实现的多个轨迹上,包括机器人操纵器和无人机(UAV)。该数据集以及文档和实用工具可在以下网站公开获取:https://github.com/MahmoudYidi/Fruity.git。
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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