Please use this identifier to cite or link to this item:
http://ir.futminna.edu.ng:8080/jspui/handle/123456789/19109
Title: | Development of maize plant dataset for intelligent recognition and weed control |
Authors: | Olaniyi, O. M. Salaudeen, M. T. Daniya, E Abdullahi, I. M. Folorunso, T. A. Bala, J. A. Nuhu, B. K. Adedigba, A. P. Oluwole, B. I. Bankole, A. O. Macarthy, O. M. |
Keywords: | Maize Images Precision Agriculture Autonomous robot Herbicides |
Issue Date: | Feb-2023 |
Publisher: | Data in Brief |
Citation: | Olaniyi, O. M., Salaudeen, M. T., Daniya, E., Abdullahi, I. M., Folorunso, T. A., Bala, J. A., ... & Macarthy, O. M. (2023). Development of maize plant dataset for intelligent recognition and weed control. Data in Brief, 47, 109030. |
Abstract: | This paper focuses on the development of maize plant datasets for the purposes of recognizing maize plants and weed species, as well as the precise automated application of herbicides to weeds. The dataset includes 36,374 images captured with a high-resolution digital camera during the weed survey and 500 images annotated with the Labelmg suite. Images of the eighteen farmland locations in North Central Nigeria, containing the maize plants and their associated weeds were captured using a high-resolution camera in each location. This dataset will serve as a benchmark for computer vision and machine learning tasks in the intelligent maize and weed recognition research. |
URI: | http://repository.futminna.edu.ng:8080/jspui/handle/123456789/19109 |
Appears in Collections: | Mechatronics Engineering |
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