Adhinata, Faisal Dharma and Wahyono, Wahyono and Sumiharto, Raden (2024) A comprehensive survey on weed and crop classification using machine learning and deep learning. Artificial Intelligence in Agriculture, 13. 45- 63. ISSN 25897217
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Abstract
Machine learning and deep learning are subsets of Artificial Intelligence that have revolutionized object detection and classification in images or videos. This technology plays a crucial role in facilitating the transition from conventional to precision agriculture, particularly in the context of weed control. Precision agriculture, which previously relied on manual efforts, has now embraced the use of smart devices for more efficient weed detection. However, several challenges are associated with weed detection, including the visual similarity between weed and crop, occlusion and lighting effects, as well as the need for early-stage weed control. Therefore, this study aimed to provide a comprehensive review of the application of both traditional machine learning and deep learning, as well as the combination of the two methods, for weed detection across different crop fields. The results of this review show the advantages and disadvantages of using machine learning and deep learning. Generally, deep learning produced superior accuracy compared to machine learning under various conditions. Machine learning required the selection of the right combination of features to achieve high accuracy in classifying weed and crop, particularly under conditions consisting of lighting and early growth effects. Moreover, a precise segmentation stage would be required in cases of occlusion. Machine learning had the advantage of achieving real-time processing by producing smaller models than deep learning, thereby eliminating the need for additional GPUs. However, the development of GPU technology is currently rapid, so researchers are more often using deep learning for more accurate weed identification.
Item Type: | Article |
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Uncontrolled Keywords: | Deep learning; Machine learning; Precision agriculture; Weed control; Weed detection |
Subjects: | Q Science > QA Mathematics > QA75 Electronic computers. Computer science |
Divisions: | Faculty of Mathematics and Natural Sciences > Computer Science & Electronics Department |
Depositing User: | Wiyarsih Wiyarsih |
Date Deposited: | 09 Apr 2025 07:05 |
Last Modified: | 09 Apr 2025 07:05 |
URI: | https://ir.lib.ugm.ac.id/id/eprint/16003 |