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Robot-supervised Learning of Crop Row Segmentation

Marianne Bakken, Vignesh Raja Ponnambalam, Richard J. D. Moore, Jon Glenn Omholt Gjevestad, Pål Johan From

Year
2021
Citations
12

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.

Keywords

Artificial intelligenceComputer scienceSegmentationConvolutional neural networkImage segmentationComputer visionRobotRGB color modelField (mathematics)Deep learning

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