Potato precision planter metering system based on improved YOLOv5n-ByteTrack.

IF 4.1 2区 生物学 Q1 PLANT SCIENCES
Frontiers in Plant Science Pub Date : 2025-04-28 eCollection Date: 2025-01-01 DOI:10.3389/fpls.2025.1563551
Cisen Xiao, Changlin Song, Junmin Li, Min Liao, Yongfan Pu, Kun Du
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引用次数: 0

Abstract

Accurate assessment of the planting effect is crucial during the potato cultivation process. Currently, manual statistical methods are inefficient and challenging to evaluate in real-time. To address this issue, this study proposes a detection algorithm for the potato planting machine's seed potato scooping scene, based on an improved lightweight YOLO v5n model. Initially, the C3-Faster module is introduced, which reduces the number of parameters and computational load while maintaining detection accuracy. Subsequently, re-parameterized convolution (RepConv) is incorporated into the feature extraction network architecture, enhancing the model's inference speed by leveraging the correlation between features. Finally, to further improve the efficiency of the model for mobile applications, layer-adaptive magnitude-based pruning (LAMP) technology is employed to eliminate redundant channels with minimal impact on performance. The experimental results indicate that: 1) The improved YOLOv5n model exhibits a 56.8% reduction in parameters, a 56.1% decrease in giga floating point operations per second (GFLOPs), a 51.4% reduction in model size, and a 37.0% reduction in Embedded Device Inference Time compared to the YOLOv5n model. Additionally, the mean average precision (mAP) at mAP@0.5 achieves up to 98.0%. 2) Compared with the YOLO series model, mAP@0.5 is close, and the parameters, GFLOPs, and model size are significantly decreased. 3) Combining the ByteTrack algorithm and counting method, the accuracy of counting reaches 96.6%. Based on these improvements, we designed a potato precision planter metering system that supports real-time monitoring of omission, replanting, and qualified casting during the planting process. This system provides effective support for potato precision planting and offers a visual representation of the planting outcomes, demonstrating its practical value for the industry.

基于改进YOLOv5n-ByteTrack的马铃薯精密播种机计量系统。
在马铃薯栽培过程中,对种植效果的准确评价至关重要。目前,手工统计方法效率低下,难以进行实时评估。针对这一问题,本研究提出了一种基于改进轻量级YOLO v5n模型的马铃薯播种机种薯铲场景检测算法。最初引入了C3-Faster模块,在保持检测精度的同时减少了参数数量和计算负荷。随后,在特征提取网络架构中引入reparameterized convolution (RepConv),利用特征之间的相关性提高模型的推理速度。最后,为了进一步提高移动应用模型的效率,采用层自适应基于幅度的修剪(LAMP)技术,在对性能影响最小的情况下消除冗余信道。实验结果表明:1)改进的YOLOv5n模型与YOLOv5n模型相比,参数减少56.8%,每秒千兆浮点运算(GFLOPs)减少56.1%,模型尺寸减少51.4%,嵌入式设备推理时间减少37.0%。此外,在mAP@0.5的平均精度(mAP)达到98.0%。2)与YOLO系列模型相比,mAP@0.5接近,参数、GFLOPs、模型尺寸均显著减小。3)将ByteTrack算法与计数方法相结合,计数准确率达到96.6%。基于这些改进,我们设计了一个马铃薯精密种植计量系统,支持在种植过程中实时监测遗漏、补种和合格浇注。该系统为马铃薯精准种植提供了有效的支持,并对种植成果进行了可视化的呈现,展示了其在行业中的实用价值。
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来源期刊
Frontiers in Plant Science
Frontiers in Plant Science PLANT SCIENCES-
CiteScore
7.30
自引率
14.30%
发文量
4844
审稿时长
14 weeks
期刊介绍: In an ever changing world, plant science is of the utmost importance for securing the future well-being of humankind. Plants provide oxygen, food, feed, fibers, and building materials. In addition, they are a diverse source of industrial and pharmaceutical chemicals. Plants are centrally important to the health of ecosystems, and their understanding is critical for learning how to manage and maintain a sustainable biosphere. Plant science is extremely interdisciplinary, reaching from agricultural science to paleobotany, and molecular physiology to ecology. It uses the latest developments in computer science, optics, molecular biology and genomics to address challenges in model systems, agricultural crops, and ecosystems. Plant science research inquires into the form, function, development, diversity, reproduction, evolution and uses of both higher and lower plants and their interactions with other organisms throughout the biosphere. Frontiers in Plant Science welcomes outstanding contributions in any field of plant science from basic to applied research, from organismal to molecular studies, from single plant analysis to studies of populations and whole ecosystems, and from molecular to biophysical to computational approaches. Frontiers in Plant Science publishes articles on the most outstanding discoveries across a wide research spectrum of Plant Science. The mission of Frontiers in Plant Science is to bring all relevant Plant Science areas together on a single platform.
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