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YOLOv7-李子:利用深度学习推进自然环境中的李子果实检测

YOLOv7-Plum: Advancing Plum Fruit Detection in Natural Environments with Deep Learning.

作者信息

Tang Rong, Lei Yujie, Luo Beisiqi, Zhang Junbo, Mu Jiong

机构信息

College of Information Engineering, Sichuan Agricultural University, Ya'an 625000, China.

Sichuan Key Laboratory of Agricultural Information Engineering, Ya'an 625000, China.

出版信息

Plants (Basel). 2023 Aug 7;12(15):2883. doi: 10.3390/plants12152883.

Abstract

The plum is a kind of delicious and common fruit with high edible value and nutritional value. The accurate and effective detection of plum fruit is the key to fruit number counting and pest and disease early warning. However, the actual plum orchard environment is complex, and the detection of plum fruits has many problems, such as leaf shading and fruit overlapping. The traditional method of manually estimating the number of fruits and the presence of pests and diseases used in the plum growing industry has disadvantages, such as low efficiency, a high cost, and low accuracy. To detect plum fruits quickly and accurately in a complex orchard environment, this paper proposes an efficient plum fruit detection model based on an improved You Only Look Once version 7(YOLOv7). First, different devices were used to capture high-resolution images of plum fruits growing under natural conditions in a plum orchard in Gulin County, Sichuan Province, and a dataset for plum fruit detection was formed after the manual screening, data enhancement, and annotation. Based on the dataset, this paper chose YOLOv7 as the base model, introduced the Convolutional Block Attention Module (CBAM) attention mechanism in YOLOv7, used Cross Stage Partial Spatial Pyramid Pooling-Fast (CSPSPPF) instead of Cross Stage Partial Spatial Pyramid Pooling(CSPSPP) in the network, and used bilinear interpolation to replace the nearest neighbor interpolation in the original network upsampling module to form the improved target detection algorithm YOLOv7-plum. The tested YOLOv7-plum model achieved an average precision (AP) value of 94.91%, which was a 2.03% improvement compared to the YOLOv7 model. In order to verify the effectiveness of the YOLOv7-plum algorithm, this paper evaluated the performance of the algorithm through ablation experiments, statistical analysis, etc. The experimental results showed that the method proposed in this study could better achieve plum fruit detection in complex backgrounds, which helped to promote the development of intelligent cultivation in the plum industry.

摘要

李子是一种美味且常见的水果,具有较高的食用价值和营养价值。准确有效地检测李子果实是果实数量计数和病虫害早期预警的关键。然而,实际的李子园环境复杂,李子果实检测存在诸多问题,如叶片遮挡和果实重叠。李子种植行业传统的人工估计果实数量和病虫害情况的方法存在效率低、成本高、准确性低等缺点。为了在复杂的果园环境中快速准确地检测李子果实,本文提出了一种基于改进的你只看一次版本7(YOLOv7)的高效李子果实检测模型。首先,使用不同设备采集四川省古蔺县某李子园自然条件下生长的李子果实的高分辨率图像,经过人工筛选、数据增强和标注后形成李子果实检测数据集。基于该数据集,本文选择YOLOv7作为基础模型,在YOLOv7中引入卷积块注意力模块(CBAM)注意力机制,在网络中使用跨阶段部分空间金字塔池化快速版(CSPSPPF)代替跨阶段部分空间金字塔池化(CSPSPP),并使用双线性插值代替原网络上采样模块中的最近邻插值,形成改进的目标检测算法YOLOv7 - plum。测试的YOLOv7 - plum模型的平均精度(AP)值达到94.91%,与YOLOv7模型相比提高了2.03%。为了验证YOLOv7 - plum算法的有效性,本文通过消融实验、统计分析等对算法性能进行了评估。实验结果表明本研究提出的方法能够更好地在复杂背景下实现李子果实检测,有助于推动李子产业智能栽培的发展。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c1d8/10420999/f8ba136ac430/plants-12-02883-g001.jpg

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