Spike(软件开发)
人工智能
计算机科学
模式识别(心理学)
方向(向量空间)
深度学习
领域(数学)
精准农业
冬小麦
数学
农业
生物
农学
生态学
几何学
软件工程
纯数学
作者
Jianqing Zhao,Jiawei Yan,Tianjie Xue,Suwan Wang,Xiaolei Qiu,Xia Yao,Yongchao Tian,Yan Zhu,Weixing Cao,Xiaohu Zhang
标识
DOI:10.1016/j.compag.2022.107087
摘要
Detecting and characterizing spikes from wheat field images is essential in wheat growth monitoring for precision farming. Along with various technological developments, deep-learning-based methods have remarkably improved wheat spike detection performance. However, detecting small and overlapping wheat spikes in UAV images is still challenging because high spike occlusion and complex background can cause error detection and miss detection problems. This paper proposes a deep learning method for oriented and small wheat spike detection (OSWSDet). Unlike classical wheat spike detection methods, OSWSDet introduces the orientation of wheat spikes into the YOLO framework by integrating a circle smooth label (CSL) and a micro-scale detection layer. These improvements enhance the ability to detect small-sized wheat spikes and prevent wheat spike detection errors. The experiment results show that OSWSDet outperforms classical wheat spike detection methods, and the average accuracy (AP) is 90.5%. OSWSDet can accurately detect spikes in UAV images with complex field backgrounds and provides technical references for future field wheat phenotype monitoring.
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