Robot-supervised Learning of Crop Row Segmentation

2021 IEEE INTERNATIONAL CONFERENCE ON ROBOTICS AND AUTOMATION (ICRA 2021)(2021)

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Abstract
We propose an approach for robot-supervised learning that automates label generation for semantic segmentation with Convolutional Neural Networks (CNNs) for crop row detection in a field. Using a training robot equipped with RTK GNSS and RGB camera, we train a neural network that can later be used for pure vision-based navigation. We test our approach on an agri-robot in a strawberry field and successfully train crop row segmentation without any hand-drawn image labels. Our main finding is that the resulting segmentation output of the CNN shows better performance than the noisy labels it was trained on. Finally, we conduct open-loop field trials with our agri-robot and show that row-following based on the segmentation result is accurate enough for closed-loop guidance. We conclude that training with noisy segmentation labels is a promising approach for learning vision-based crop row following.
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Key words
crop row segmentation,robot-supervised learning,label generation,semantic segmentation,convolutional neural networks,crop row detection,training robot,pure vision-based navigation,strawberry field,hand-drawn image labels,noisy labels,open-loop field trials,agri-robot,row-following,noisy segmentation labels,vision-based crop row,closed-loop guidance,RTK GNSS,RGB camera
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