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Main Authors: Rai, Sidharth, Dalal, Aryan, Slichter, Riley, Sharda, Ajay
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2504.19334
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author Rai, Sidharth
Dalal, Aryan
Slichter, Riley
Sharda, Ajay
author_facet Rai, Sidharth
Dalal, Aryan
Slichter, Riley
Sharda, Ajay
contents Effective seed sowing in precision agriculture is hindered by challenges such as residue accumulation, low soil temperatures, and hair pinning (crop residue pushed in the trench by furrow opener), which obstruct optimal trench formation. Row cleaners are employed to mitigate these issues, but there is a lack of quantitative methods to assess trench cleanliness. In this study, a novel computer vision-based method was developed to evaluate row cleaner performance. Multiple air seeders were equipped with a video acquisition system to capture trench conditions after row cleaner operation, enabling an effective comparison of the performance of each row cleaner. The captured data were used to develop a segmentation model that analyzed key elements such as soil, straw, and machinery. Using the results from the segmentation model, an objective method was developed to quantify row cleaner performance. The results demonstrated the potential of this method to improve row cleaner selection and enhance seeding efficiency in precision agriculture.
format Preprint
id arxiv_https___arxiv_org_abs_2504_19334
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Enhancing seeding efficiency using a computer vision system to monitor furrow quality in real-time
Rai, Sidharth
Dalal, Aryan
Slichter, Riley
Sharda, Ajay
Computer Vision and Pattern Recognition
Effective seed sowing in precision agriculture is hindered by challenges such as residue accumulation, low soil temperatures, and hair pinning (crop residue pushed in the trench by furrow opener), which obstruct optimal trench formation. Row cleaners are employed to mitigate these issues, but there is a lack of quantitative methods to assess trench cleanliness. In this study, a novel computer vision-based method was developed to evaluate row cleaner performance. Multiple air seeders were equipped with a video acquisition system to capture trench conditions after row cleaner operation, enabling an effective comparison of the performance of each row cleaner. The captured data were used to develop a segmentation model that analyzed key elements such as soil, straw, and machinery. Using the results from the segmentation model, an objective method was developed to quantify row cleaner performance. The results demonstrated the potential of this method to improve row cleaner selection and enhance seeding efficiency in precision agriculture.
title Enhancing seeding efficiency using a computer vision system to monitor furrow quality in real-time
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2504.19334