In recent years, precision agriculture has been introducing groundbreaking innovations in the field, with a strong focus on automation. However, research studies in robotics and autonomous navigation often rely on controlled simulations or isolated field trials. The absence of a realistic common benchmark represents a significant limitation for the diffusion of robust autonomous systems under real complex agricultural conditions. Vineyards pose significant challenges due to their dynamic nature, and they are increasingly drawing attention from both academic and industrial stakeholders interested in automation. In this context, we introduce the TEMPO-VINE dataset, a large-scale multi-temporal dataset specifically designed for evaluating sensor fusion, simultaneous localization and mapping (SLAM), and place recognition techniques within operational vineyard environments. TEMPO-VINE is the first multi-modal public dataset that brings together data from heterogeneous LiDARs of different price levels, AHRS, RTK-GPS, and cameras in real trellis and pergola vineyards, with multiple rows exceeding 100 m in length. In this work, we address a critical gap in the landscape of agricultural datasets by providing researchers with a comprehensive data collection and ground truth trajectories in different seasons, vegetation growth stages, terrain and weather conditions. The sequence paths with multiple runs and revisits will foster the development of sensor fusion, localization, mapping and place recognition solutions for agricultural fields. The dataset, the processing tools and the benchmarking results will be available at the dedicated webpage upon acceptance.
翻译:近年来,精准农业在田间领域引入了突破性创新,并高度聚焦于自动化。然而,机器人学与自主导航的研究往往依赖于受控模拟或孤立的田间试验。缺乏真实的通用基准,是稳健自主系统在真实复杂农业条件下推广应用的一个显著限制。葡萄园因其动态特性带来了重大挑战,并日益受到关注自动化的学术界和工业界利益相关者的关注。在此背景下,我们推出了TEMPO-VINE数据集,这是一个大规模多时相数据集,专门设计用于在运营葡萄园环境中评估传感器融合、同步定位与建图(SLAM)以及位置识别技术。TEMPO-VINE是首个多模态公共数据集,汇集了来自不同价格级别的异构激光雷达、AHRS、RTK-GPS以及相机在真实棚架式和棚架式葡萄园中的数据,其中多行葡萄藤长度超过100米。在本工作中,我们通过为研究人员提供不同季节、植被生长阶段、地形和天气条件下的全面数据采集与真实轨迹,填补了农业数据集领域的一个关键空白。包含多次运行和重访的序列路径将促进农业领域传感器融合、定位、建图和位置识别解决方案的发展。该数据集、处理工具及基准测试结果将在论文录用后于专用网页上提供。