杂草
领域(数学)
作物
农林复合经营
农业工程
大田作物
农学
环境科学
生物
数学
工程类
纯数学
作者
Zhiyu Jia,Ming Zhang,Yuan Chang,Qinghua Liu,Hongrui Liu,Xiulin Qiu,Weiguo Zhao,Jinlong Shi
出处
期刊:Agronomy
[Multidisciplinary Digital Publishing Institute]
日期:2024-10-12
卷期号:14 (10): 2355-2355
被引量:14
标识
DOI:10.3390/agronomy14102355
摘要
This study presents an improved weed detection model, ADL-YOLOv8, designed to enhance detection accuracy for small targets while achieving model lightweighting. It addresses the challenge of attaining both high accuracy and low memory usage in current intelligent weeding equipment. By overcoming this issue, the research not only reduces the hardware costs of automated impurity removal equipment but also enhances software recognition accuracy, contributing to reduced pesticide use and the promotion of sustainable agriculture. The ADL-YOLOv8 model incorporates a lighter AKConv network for better processing of specific features, an ultra-lightweight DySample upsampling module to improve accuracy and efficiency, and the LSKA-Attention mechanism for enhanced detection, particularly of small targets. On the same dataset, ADL-YOLOv8 demonstrated a 2.2% increase in precision, a 2.45% rise in recall, a 3.07% boost in mAP@0.5, and a 1.9% enhancement in mAP@0.95. The model’s size was cut by 15.77%, and its computational complexity was reduced by 10.98%. These findings indicate that ADL-YOLOv8 not only exceeds the original YOLOv8n model but also surpasses the newer YOLOv9t and YOLOv10n in overall performance. The improved algorithm model makes the hardware cost required for embedded terminals lower.
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