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Accurate and fast implementation of soybean pod counting and localization from high-resolution image.
Yu, Zhenghong; Wang, Yangxu; Ye, Jianxiong; Liufu, Shengjie; Lu, Dunlu; Zhu, Xiuli; Yang, Zhongming; Tan, Qingji.
Afiliação
  • Yu Z; College of Robotics, Guangdong Polytechnic of Science and Technology, Zhuhai, China.
  • Wang Y; College of Robotics, Guangdong Polytechnic of Science and Technology, Zhuhai, China.
  • Ye J; Department of Network Technology, Guangzhou Institute of Software Engineering, Conghua, China.
  • Liufu S; College of Robotics, Guangdong Polytechnic of Science and Technology, Zhuhai, China.
  • Lu D; School of Electronics and Information Engineering, Wuyi University, Jiangmen, China.
  • Zhu X; College of Business, Guangzhou College of Technology and Business, Foshan, China.
  • Yang Z; College of Robotics, Guangdong Polytechnic of Science and Technology, Zhuhai, China.
  • Tan Q; College of Robotics, Guangdong Polytechnic of Science and Technology, Zhuhai, China.
Front Plant Sci ; 15: 1320109, 2024.
Article em En | MEDLINE | ID: mdl-38444529
ABSTRACT

Introduction:

Soybean pod count is one of the crucial indicators of soybean yield. Nevertheless, due to the challenges associated with counting pods, such as crowded and uneven pod distribution, existing pod counting models prioritize accuracy over efficiency, which does not meet the requirements for lightweight and real-time tasks.

Methods:

To address this goal, we have designed a deep convolutional network called PodNet. It employs a lightweight encoder and an efficient decoder that effectively decodes both shallow and deep information, alleviating the indirect interactions caused by information loss and degradation between non-adjacent levels.

Results:

We utilized a high-resolution dataset of soybean pods from field harvesting to evaluate the model's generalization ability. Through experimental comparisons between manual counting and model yield estimation, we confirmed the effectiveness of the PodNet model. The experimental results indicate that PodNet achieves an R2 of 0.95 for the prediction of soybean pod quantities compared to ground truth, with only 2.48M parameters, which is an order of magnitude lower than the current SOTA model YOLO POD, and the FPS is much higher than YOLO POD.

Discussion:

Compared to advanced computer vision methods, PodNet significantly enhances efficiency with almost no sacrifice in accuracy. Its lightweight architecture and high FPS make it suitable for real-time applications, providing a new solution for counting and locating dense objects.
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Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Idioma: En Ano de publicação: 2024 Tipo de documento: Article