Suppr超能文献

YOLO-P:一种在复杂果园采摘环境中快速检测梨的有效方法。

YOLO-P: An efficient method for pear fast detection in complex orchard picking environment.

作者信息

Sun Han, Wang Bingqing, Xue Jinlin

机构信息

College of Engineering, Nanjing Agricultural University, Nanjing, China.

Agricultural Machinery Information Center, Department of Agriculture and Rural Affairs of Jiangsu Province, Nanjing, China.

出版信息

Front Plant Sci. 2023 Jan 4;13:1089454. doi: 10.3389/fpls.2022.1089454. eCollection 2022.

Abstract

INTRODUCTION

Fruit detection is one of the key functions of an automatic picking robot, but fruit detection accuracy is seriously decreased when fruits are against a disordered background and in the shade of other objects, as is commmon in a complex orchard environment.

METHODS

Here, an effective mode based on YOLOv5, namely YOLO-P, was proposed to detect pears quickly and accurately. Shuffle block was used to replace the Conv, Batch Norm, SiLU (CBS) structure of the second and third stages in the YOLOv5 backbone, while the inverted shuffle block was designed to replace the fourth stage's CBS structure. The new backbone could extract features of pears from a long distance more efficiently. A convolutional block attention module (CBAM) was inserted into the reconstructed backbone to improve the robot's ability to capture pears' key features. Hard-Swish was used to replace the activation functions in other CBS structures in the whole YOLOv5 network. A weighted confidence loss function was designed to enhance the detection effect of small targets.

RESULT

At last, model comparison experiments, ablation experiments, and daytime and nighttime pear detection experiments were carried out. In the model comparison experiments, the detection effect of YOLO-P was better than other lightweight networks. The results showed that the module's average precision (AP) was 97.6%, which was 1.8% higher than the precision of the original YOLOv5s. The model volume had been compressed by 39.4%, from 13.7MB to only 8.3MB. Ablation experiments verified the effectiveness of the proposed method. In the daytime and nighttime pear detection experiments, an embedded industrial computer was used to test the performance of YOLO-P against backgrounds of different complexities and when fruits are in different degrees of shade.

DISCUSSION

The results showed that YOLO-P achieved the highest F1 score (96.1%) and frames per second (FPS) (32 FPS). It was sufficient for the picking robot to quickly and accurately detect pears in orchards. The proposed method can quickly and accurately detect pears in unstructured environments. YOLO-P provides support for automated pear picking and can be a reference for other types of fruit detection in similar environments.

摘要

引言

果实检测是自动采摘机器人的关键功能之一,但在复杂果园环境中常见的情况下,当果实处于杂乱背景和其他物体阴影下时,果实检测准确率会严重下降。

方法

在此,提出了一种基于YOLOv5的有效模式,即YOLO-P,以快速准确地检测梨。使用混洗块替换YOLOv5主干中第二和第三阶段的卷积、批量归一化、SiLU(CBS)结构,同时设计倒置混洗块替换第四阶段的CBS结构。新的主干能够更有效地从远距离提取梨的特征。在重构的主干中插入卷积块注意力模块(CBAM),以提高机器人捕捉梨关键特征的能力。使用Hard-Swish替换整个YOLOv5网络中其他CBS结构的激活函数。设计了加权置信度损失函数以增强小目标的检测效果。

结果

最后,进行了模型对比实验、消融实验以及白天和夜间梨检测实验。在模型对比实验中,YOLO-P的检测效果优于其他轻量级网络。结果表明,该模块的平均精度(AP)为97.6%,比原始YOLOv5s的精度高1.8%。模型体积压缩了39.4%,从13.7MB降至仅8.3MB。消融实验验证了所提方法的有效性。在白天和夜间梨检测实验中,使用嵌入式工业计算机测试YOLO-P在不同复杂背景以及果实处于不同阴影程度下的性能。

讨论

结果表明,YOLO-P实现了最高的F1分数(96.1%)和每秒帧数(FPS)(32 FPS)。这足以让采摘机器人在果园中快速准确地检测梨。所提方法能够在非结构化环境中快速准确地检测梨。YOLO-P为梨的自动化采摘提供了支持,并且可以为类似环境中其他类型的果实检测提供参考。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d8ab/9846358/6af52ba17955/fpls-13-1089454-g001.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验