A Method of Modern Standardized Apple Orchard Flowering Monitoring Based on S-YOLO

Author:

Zhou Xinzhu1,Sun Guoxiang12ORCID,Xu Naimin1,Zhang Xiaolei1,Cai Jiaqi1,Yuan Yunpeng1,Huang Yinfeng1

Affiliation:

1. College of Engineering, Nanjing Agricultural University, Nanjing 210031, China

2. Jiangsu Province Engineering Lab for Modern Facilities of Agriculture Technology & Equipment, Nanjing 210031, China

Abstract

Monitoring fruit tree flowering information in the open world is more crucial than in the research-oriented environment for managing agricultural production to increase yield and quality. This work presents a transformer-based flowering period monitoring approach in an open world in order to better monitor the whole blooming time of modern standardized orchards utilizing IoT technologies. This study takes images of flowering apple trees captured at a distance in the open world as the research object, extends the dataset by introducing the Slicing Aided Hyper Inference (SAHI) algorithm, and establishes an S-YOLO apple flower detection model by substituting the YOLOX backbone network with Swin Transformer-tiny. The experimental results show that S-YOLO outperformed YOLOX-s in the detection accuracy of the four blooming states by 7.94%, 8.05%, 3.49%, and 6.96%. It also outperformed YOLOX-s by 10.00%, 9.10%, 13.10%, and 7.20% for mAPALL, mAPS, mAPM, and mAPL, respectively. By increasing the width and depth of the network model, the accuracy of the larger S-YOLO was 88.18%, 88.95%, 89.50%, and 91.95% for each flowering state and 39.00%, 32.10%, 50.60%, and 64.30% for each type of mAP, respectively. The results show that the transformer-based method of monitoring the apple flower growth stage utilized S-YOLO to achieve the apple flower count, percentage analysis, peak flowering time determination, and flowering intensity quantification. The method can be applied to remotely monitor flowering information and estimate flowering intensity in modern standard orchards based on IoT technology, which is important for developing fruit digital production management technology and equipment and guiding orchard production management.

Funder

R&D Program of Jiangsu Province

High-end Foreign Experts Recruitment Plan of China

Jiangsu agricultural science and technology Innovation Fund

Publisher

MDPI AG

Subject

Plant Science,Agronomy and Crop Science,Food Science

Reference40 articles.

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5. Peck, G.M., Combs, L.D., DeLong, C., and Yoder, K.S. (2015, January 8–12). Precision Apple Flower Thinning Using Organically Approved Chemicals. Proceedings of the International Symposium on Innovation in Integrated and Organic Horticulture (INNOHORT), Avignon, France.

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