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基于坐标注意力和组合卷积的改进型火龙果YOLOv4识别算法

Improved YOLOv4 recognition algorithm for pitaya based on coordinate attention and combinational convolution.

作者信息

Zhang Fu, Cao Weihua, Wang Shunqing, Cui Xiahua, Yang Ning, Wang Xinyue, Zhang Xiaodong, Fu Sanling

机构信息

College of Agricultural Equipment Engineering, Henan University of Science and Technology, Luoyang, China.

Collaborative Innovation Center of Machinery Equipment Advanced Manufacturing of Henan Province, Henan University of Science and Technology, Luoyang, China.

出版信息

Front Plant Sci. 2022 Oct 18;13:1030021. doi: 10.3389/fpls.2022.1030021. eCollection 2022.

Abstract

Accurate recognition method of pitaya in natural environment provides technical support for automatic picking. Aiming at the intricate spatial position relationship between pitaya fruits and branches, a pitaya recognition method based on improved YOLOv4 was proposed. GhostNet feature extraction network was used instead of CSPDarkNet53 as the backbone network of YOLOv4. A structure of generating a large number of feature maps through a small amount of calculation was used, and the redundant information in feature layer was obtained with lower computational cost, which can reduce the number of parameters and computation of the model. Coordinate attention was introduced to enhance the extraction of fine-grained feature of targets. An improved combinational convolution module was designed to save computing power and prevent the loss of effective features and improve the recognition accuracy. The Ghost Module was referenced in Yolo Head to improve computing speed and reduce delay. Precision, Recall, F1, AP, detection speed and weight size were selected as performance evaluation indexes of recognition model. 8800 images of pitaya fruit in different environments were used as the dataset, which were randomly divided into the training set, the validation set and the test set according to the ratio of 7:1:2. The research results show that the recognition accuracy of the improved YOLOv4 model for pitaya fruit is 99.23%. Recall, F1 and AP are 95.10%, 98% and 98.94%, respectively. The detection speed is 37.2 frames·s, and the weight size is 59.4MB. The improved YOLOv4 recognition algorithm can meet the requirements for the accuracy and the speed of pitaya fruit recognition in natural environment, which will ensure the rapid and accurate operation of the picking robot.

摘要

自然环境下火龙果的精确识别方法为自动采摘提供了技术支持。针对火龙果果实与枝条之间复杂的空间位置关系,提出了一种基于改进YOLOv4的火龙果识别方法。采用GhostNet特征提取网络代替CSPDarkNet53作为YOLOv4的主干网络。使用了一种通过少量计算生成大量特征图的结构,以较低的计算成本获取特征层中的冗余信息,从而减少模型的参数数量和计算量。引入坐标注意力以增强目标细粒度特征的提取。设计了一种改进的组合卷积模块以节省计算能力,防止有效特征丢失并提高识别精度。在Yolo Head中引用Ghost模块以提高计算速度并减少延迟。选择精度、召回率、F1、平均精度、检测速度和权重大小作为识别模型的性能评估指标。将8800张不同环境下的火龙果果实图像作为数据集,按照7:1:2的比例随机划分为训练集、验证集和测试集。研究结果表明,改进后的YOLOv4模型对火龙果果实的识别准确率为99.23%。召回率、F1和平均精度分别为95.10%、98%和98.94%。检测速度为37.2帧·秒,权重大小为59.4MB。改进后的YOLOv4识别算法能够满足自然环境下火龙果果实识别对精度和速度的要求,这将确保采摘机器人的快速准确运行。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/aac7/9623319/7511bb9c5744/fpls-13-1030021-g001.jpg

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