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A Machine Learning Approach to Growth Direction Finding for Automated Planting of Bulbous Plants.


ABSTRACT: In agricultural robotics, a unique challenge exists in the automated planting of bulbous plants: the estimation of the bulb's growth direction. To date, no existing work addresses this challenge. Therefore, we propose the first robotic vision framework for the estimation of a plant bulb's growth direction. The framework takes as input three x-ray images of the bulb and extracts shape, edge, and texture features from each image. These features are then fed into a machine learning regression algorithm in order to predict the 2D projection of the bulb's growth direction. Using the x-ray system's geometry, these 2D estimates are then mapped to the 3D world coordinate space, where a filtering on the estimate's variance is used to determine whether the estimate is reliable. We applied our algorithm on 27,200 x-ray simulations from T. Apeldoorn bulbs on a standard desktop workstation. Results indicate that our machine learning framework is fast enough to meet industry standards (<0.1?seconds per bulb) while providing acceptable accuracy (e.g. error

SUBMITTER: Booth BG 

PROVIDER: S-EPMC6971015 | biostudies-literature | 2020 Jan

REPOSITORIES: biostudies-literature

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A Machine Learning Approach to Growth Direction Finding for Automated Planting of Bulbous Plants.

Booth Brian G BG   Sijbers Jan J   De Beenhouwer Jan J  

Scientific reports 20200120 1


In agricultural robotics, a unique challenge exists in the automated planting of bulbous plants: the estimation of the bulb's growth direction. To date, no existing work addresses this challenge. Therefore, we propose the first robotic vision framework for the estimation of a plant bulb's growth direction. The framework takes as input three x-ray images of the bulb and extracts shape, edge, and texture features from each image. These features are then fed into a machine learning regression algor  ...[more]

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