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基于改进的YOLOv5s模型的田间小麦花期实时测定

Real-time determination of flowering period for field wheat based on improved YOLOv5s model.

作者信息

Song Xubin, Liu Lipeng, Wang Chunying, Zhang Wanteng, Li Yang, Zhu Junke, Liu Ping, Li Xiang

机构信息

College of Mechanical and Electronic Engineering, Shandong Agricultural University, Taian, China.

School of Agricultural and Food Engineering, Shandong University of Technology, Zibo, China.

出版信息

Front Plant Sci. 2023 Jan 11;13:1025663. doi: 10.3389/fpls.2022.1025663. eCollection 2022.

Abstract

The flowering period is one of the important indexes of wheat breeding. The early or late flowering affects the final yield and character stability of wheat. In order to solve the problem that it is difficult to accurately and quickly detect the flowering period of a large number of wheat breeding materials, a determination method of flowering period for field wheat based on the improved You Only Look Once (YOLO) v5s model was proposed. Firstly, a feature fusion (FF) method combing RGB images and corresponding comprehensive color features was proposed to highlight more texture features and reduce the distortion caused by light on the extracted feature images. Second, the YOLOv5s model was selected as a base version of the improved model and the convolutional block attention model (CBAM) was adopted into the feature fusion layer of YOLOV5s model. Florets and spikelets were given greater weight along the channel and spatial dimensions to further refine their effective feature information. At the same time, an integrated Transformer small-target detection head (TSDH) was added to solve the high miss rate of small targets in wheat population images. The accurate and rapid detection of florets and spikelets was realized, and the flowering period was determined according to the proportion of florets and spikelets. The experimental results showed that the average computing time of the proposed method was 11.5ms, and the average recognition accuracy of florets and spikelets was 88.9% and 96.8%, respectively. The average difference between the estimated flowering rate and the actual flowering rate was within 5%, and the determination accuracy of the flowering period reached 100%, which met the basic requirements of the flowering period determination of wheat population in the field.

摘要

开花期是小麦育种的重要指标之一。开花过早或过晚都会影响小麦的最终产量和性状稳定性。为了解决大量小麦育种材料开花期难以准确快速检测的问题,提出了一种基于改进的You Only Look Once (YOLO) v5s模型的田间小麦开花期测定方法。首先,提出了一种将RGB图像与相应综合颜色特征相结合的特征融合(FF)方法,以突出更多纹理特征,减少光照对提取特征图像造成的失真。其次,选择YOLOv5s模型作为改进模型的基础版本,并将卷积块注意力模型(CBAM)应用于YOLOV5s模型的特征融合层。在通道和空间维度上赋予小花和小穗更大的权重,进一步细化其有效特征信息。同时,添加了一个集成的Transformer小目标检测头(TSDH),以解决小麦群体图像中小目标漏检率高的问题。实现了对小花和小穗的准确快速检测,并根据小花和小穗的比例确定开花期。实验结果表明,该方法的平均计算时间为11.5ms,小花和小穗的平均识别准确率分别为88.9%和96.8%。估计开花率与实际开花率的平均差值在5%以内,开花期测定准确率达到100%,满足田间小麦群体开花期测定的基本要求。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9843/9874244/59ae5935917c/fpls-13-1025663-g001.jpg

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