Implementation and Evaluation of Attention Aggregation Technique for Pear Disease Detection
-
Published:2024-07-15
Issue:7
Volume:14
Page:1146
-
ISSN:2077-0472
-
Container-title:Agriculture
-
language:en
-
Short-container-title:Agriculture
Author:
Hai Tong1, Zhang Ningyi1, Lu Xiaoyi1, Xu Jiping1, Wang Xinliang1, Hu Jiewei1, Ji Mengxue1, Zhao Zijia1, Wang Jingshun123, Dong Min1
Affiliation:
1. China Agricultural University, Beijing 100083, China 2. College of Biology and Food Engineering, Anyang Institute of Technology, No. 73 Huanghe Road, Anyang 455000, China 3. Taihang Mountain Forest Pests Observationand Research Station of Henan Province, Linzhou 456550, China
Abstract
In this study, a novel approach integrating multimodal data processing and attention aggregation techniques is proposed for pear tree disease detection. The focus of the research is to enhance the accuracy and efficiency of disease detection by fusing data from diverse sources, including images and environmental sensors. The experimental results demonstrate that the proposed method outperforms in key performance metrics such as precision, recall, accuracy, and F1-Score. Specifically, the model was tested on the Kaggle dataset and compared with existing advanced models such as RetinaNet, EfficientDet, Detection Transformer (DETR), and the You Only Look Once (YOLO) series. The experimental outcomes indicate that the proposed model achieves a precision of 0.93, a recall of 0.90, an accuracy of 0.92, and an F1-Score of 0.91, surpassing those of the comparative models. Additionally, detailed ablation experiments were conducted on the multimodal weighting module and the dynamic regression loss function to verify their specific contributions to the model performance. These experiments not only validated the effectiveness of the proposed method but also demonstrate its potential application in pear tree disease detection. Through this research, an effective technological solution is provided for the agricultural disease detection domain, offering substantial practical value and broad application prospects.
Funder
Research and Demonstration of Construction and Green Control Technology of Forestry Pest Monitoring Network in Taihang Mountains
Reference32 articles.
1. Plant disease detection and classification by deep learning—A review;Li;IEEE Access,2021 2. Zhang, Y., Wa, S., Liu, Y., Zhou, X., Sun, P., and Ma, Q. (2021). High-accuracy detection of maize leaf diseases CNN based on multi-pathway activation function module. Remote Sens., 13. 3. Gu, Y.H., Yin, H., Jin, D., Zheng, R., and Yoo, S.J. (2022). Improved multi-plant disease recognition method using deep convolutional neural networks in six diseases of apples and pears. Agriculture, 12. 4. Traditional and current-prospective methods of agricultural plant diseases detection: A review;Khakimov;IOP Conference Series: Earth and Environmental Science,2022 5. Li, Q., Ren, J., Zhang, Y., Song, C., Liao, Y., and Zhang, Y. (2023, January 9–13). Privacy-Preserving DNN Training with Prefetched Meta-Keys on Heterogeneous Neural Network Accelerators. Proceedings of the 2023 60th ACM/IEEE Design Automation Conference (DAC), San Francisco, CA, USA.
|
|