“…Large, open datasets are crucial for developing data-driven techniques and benchmarks in a new era of deep learning-based algorithms. In the literature, there are abundant datasets for urban environments (e.g., [ 6 , 7 ]), and to the authors’ knowledge, the most extensive datasets currently available for agricultural environments are the Rosario dataset [ 8 ], the Sugar Beets dataset [ 9 ], and the MAGRO dataset [ 10 ] for an apple orchard field. However, these datasets are focused on open-field agricultural environments where, on the one hand, localization and orientation may be less complex and, on the other hand, the permissible error is more significant than in closed environments, such as greenhouses, in particular, Mediterranean greenhouses.…”