TL;DR
This paper introduces a semi-artificial data augmentation method using conditional GANs to generate multi-spectral images for improved crop and weed segmentation in precision farming, reducing the need for extensive labeled datasets.
Contribution
It proposes a novel semi-artificial image generation approach conditioned on object shape, incorporating NIR data, to enhance segmentation training datasets.
Findings
Generated realistic multi-spectral plant images.
Synthetic images improve segmentation accuracy.
Method outperforms traditional data augmentation techniques.
Abstract
An effective perception system is a fundamental component for farming robots, as it enables them to properly perceive the surrounding environment and to carry out targeted operations. The most recent methods make use of state-of-the-art machine learning techniques to learn a valid model for the target task. However, those techniques need a large amount of labeled data for training. A recent approach to deal with this issue is data augmentation through Generative Adversarial Networks (GANs), where entire synthetic scenes are added to the training data, thus enlarging and diversifying their informative content. In this work, we propose an alternative solution with respect to the common data augmentation methods, applying it to the fundamental problem of crop/weed segmentation in precision farming. Starting from real images, we create semi-artificial samples by replacing the most relevant…
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