Automatic Model Based Dataset Generation for Fast and Accurate Crop and Weeds Detection
Maurilio Di Cicco, Ciro Potena, Giorgio Grisetti, Alberto Pretto

TL;DR
This paper introduces a novel synthetic data generation method for training crop and weed detection models, significantly reducing the need for extensive manual annotation in agricultural robotics.
Contribution
The authors propose a procedurally generated synthetic dataset approach that minimizes human effort and enhances training efficiency for plant detection models.
Findings
Synthetic data improves detection accuracy.
Method reduces annotation time.
Effective for training deep learning models.
Abstract
Selective weeding is one of the key challenges in the field of agriculture robotics. To accomplish this task, a farm robot should be able to accurately detect plants and to distinguish them between crop and weeds. Most of the promising state-of-the-art approaches make use of appearance-based models trained on large annotated datasets. Unfortunately, creating large agricultural datasets with pixel-level annotations is an extremely time consuming task, actually penalizing the usage of data-driven techniques. In this paper, we face this problem by proposing a novel and effective approach that aims to dramatically minimize the human intervention needed to train the detection and classification algorithms. The idea is to procedurally generate large synthetic training datasets randomizing the key features of the target environment (i.e., crop and weed species, type of soil, light conditions).…
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