Service robotics is recently enhancing precision agriculture enabling many automated processes based on efficient autonomous navigation solutions. However, data generation and infield validation campaigns hinder the progress of large-scale autonomous platforms. Simulated environments and deep visual perception are spreading as successful tools to speed up the development of robust navigation with low-cost RGB-D cameras. In this context, the contribution of this work is twofold: a synthetic dataset to train deep semantic segmentation networks together with a collection of virtual scenarios for a fast evaluation of navigation algorithms. Moreover, an automatic parametric approach is developed to explore different field geometries and features. The simulation framework and the dataset have been evaluated by training a deep segmentation network on different crops and benchmarking the resulting navigation.
@article{arxiv.2306.15517,
title = {Enhancing Navigation Benchmarking and Perception Data Generation for Row-based Crops in Simulation},
author = {Mauro Martini and Andrea Eirale and Brenno Tuberga and Marco Ambrosio and Andrea Ostuni and Francesco Messina and Luigi Mazzara and Marcello Chiaberge},
journal= {arXiv preprint arXiv:2306.15517},
year = {2023}
}
Comments
Accepted at the 14th European Conference on Precision Agriculture (ECPA) 2023