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一种基于优化的YOLOX-m的精确绿色水果检测方法。

An accurate green fruits detection method based on optimized YOLOX-m.

作者信息

Jia Weikuan, Xu Ying, Lu Yuqi, Yin Xiang, Pan Ningning, Jiang Ru, Ge Xinting

机构信息

School of Information Science and Engineering, Shandong Normal University, Jinan, China.

School of Information Science and Engineering, Zaozhuang University, Zaozhuang, China.

出版信息

Front Plant Sci. 2023 May 8;14:1187734. doi: 10.3389/fpls.2023.1187734. eCollection 2023.

Abstract

Fruit detection and recognition has an important impact on fruit and vegetable harvesting, yield prediction and growth information monitoring in the automation process of modern agriculture, and the actual complex environment of orchards poses some challenges for accurate fruit detection. In order to achieve accurate detection of green fruits in complex orchard environments, this paper proposes an accurate object detection method for green fruits based on optimized YOLOX_m. First, the model extracts features from the input image using the CSPDarkNet backbone network to obtain three effective feature layers at different scales. Then, these effective feature layers are fed into the feature fusion pyramid network for enhanced feature extraction, which combines feature information from different scales, and in this process, the Atrous spatial pyramid pooling (ASPP) module is used to increase the receptive field and enhance the network's ability to obtain multi-scale contextual information. Finally, the fused features are fed into the head prediction network for classification prediction and regression prediction. In addition, Varifocal loss is used to mitigate the negative impact of unbalanced distribution of positive and negative samples to obtain higher precision. The experimental results show that the model in this paper has improved on both apple and persimmon datasets, with the average precision (AP) reaching 64.3% and 74.7%, respectively. Compared with other models commonly used for detection, the model approach in this study has a higher average precision and has improved in other performance metrics, which can provide a reference for the detection of other fruits and vegetables.

摘要

水果检测与识别在现代农业自动化过程中的果蔬采摘、产量预测和生长信息监测方面具有重要影响,而果园实际的复杂环境给准确的水果检测带来了一些挑战。为了在复杂果园环境中实现绿色水果的准确检测,本文提出了一种基于优化的YOLOX_m的绿色水果精确目标检测方法。首先,该模型使用CSPDarkNet骨干网络从输入图像中提取特征,以获得不同尺度的三个有效特征层。然后,将这些有效特征层输入到特征融合金字塔网络进行增强特征提取,该网络结合了不同尺度的特征信息,在此过程中,使用空洞空间金字塔池化(ASPP)模块来增加感受野并增强网络获取多尺度上下文信息的能力。最后,将融合后的特征输入到头部预测网络进行分类预测和回归预测。此外,使用变焦距损失来减轻正负样本分布不平衡的负面影响,以获得更高的精度。实验结果表明,本文中的模型在苹果和柿子数据集上均有改进,平均精度(AP)分别达到64.3%和74.7%。与其他常用的检测模型相比,本研究中的模型方法具有更高的平均精度,并且在其他性能指标上也有改进,可为其他果蔬的检测提供参考。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9ec1/10200941/92497fd00d0f/fpls-14-1187734-g001.jpg

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