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基于改进的YOLOv5-AT在相似颜色背景下利用小数据集进行绿色水果检测

Green Fruit Detection with a Small Dataset under a Similar Color Background Based on the Improved YOLOv5-AT.

作者信息

Fu Xinglan, Zhao Shilin, Wang Chenghao, Tang Xuhong, Tao Dan, Li Guanglin, Jiao Leizi, Dong Daming

机构信息

College of Engineering and Technology, Southwest University, Chongqing 400716, China.

College of Electrical and Automation Engineering, East China Jiaotong University, Nanchang 330013, China.

出版信息

Foods. 2024 Mar 29;13(7):1060. doi: 10.3390/foods13071060.

Abstract

Green fruit detection is of great significance for estimating orchard yield and the allocation of water and fertilizer. However, due to the similar colors of green fruit and the background of images, the complexity of backgrounds and the difficulty in collecting green fruit datasets, there is currently no accurate and convenient green fruit detection method available for small datasets. The YOLO object detection model, a representative of the single-stage detection framework, has the advantages of a flexible structure, fast inference speed and excellent versatility. In this study, we proposed a model based on the improved YOLOv5 model that combined data augmentation methods to detect green fruit in a small dataset with a background of similar color. In the improved YOLOv5 model (YOLOv5-AT), a Conv-AT block and SA and CA blocks were designed to construct feature information from different perspectives and improve the accuracy by conveying local key information to the deeper layer. The proposed method was applied to green oranges, green tomatoes and green persimmons, and the were higher than those of other YOLO object detection models, reaching 84.6%, 98.0% and 85.1%, respectively. Furthermore, taking green oranges as an example, a of 82.2% was obtained on the basis of retaining 50% of the original dataset (163 images), which was only 2.4% lower than that obtained when using 100% of the dataset (326 images) for training. Thus, the YOLOv5-AT model combined with data augmentation methods can effectively achieve accurate detection in small green fruit datasets under a similar color background. These research results could provide supportive data for improving the efficiency of agricultural production.

摘要

绿色水果检测对于估算果园产量以及水肥分配具有重要意义。然而,由于绿色水果与图像背景颜色相似、背景复杂以及绿色水果数据集收集困难,目前尚无适用于小数据集的准确便捷的绿色水果检测方法。单阶段检测框架的代表——YOLO目标检测模型,具有结构灵活、推理速度快和通用性强的优点。在本研究中,我们提出了一种基于改进的YOLOv5模型,该模型结合了数据增强方法,用于在具有相似颜色背景的小数据集中检测绿色水果。在改进的YOLOv5模型(YOLOv5-AT)中,设计了一个Conv-AT模块以及SA和CA模块,从不同角度构建特征信息,并通过将局部关键信息传递到更深层来提高准确率。所提出的方法应用于青橙、青番茄和青柿子,其 分别高于其他YOLO目标检测模型,达到84.6%、98.0%和85.1%。此外,以青橙为例,在保留原始数据集50%(163张图像)的基础上获得了82.2%的 ,仅比使用100%的数据集(326张图像)进行训练时低2.4%。因此,结合数据增强方法的YOLOv5-AT模型能够在相似颜色背景下的小绿色水果数据集中有效地实现准确检测。这些研究结果可为提高农业生产效率提供支持性数据。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ecd1/11011402/d66b5fe04255/foods-13-01060-g001.jpg

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