2023
DOI: 10.3390/agronomy13102663
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CSLSNet: A Compressed Domain Classification Model for Pest and Disease Images

Jing Hua,
Tuan Zhu,
Fendong Zou
et al.

Abstract: The management of global food security is one of the major issues of concern to the international community today. Ensuring the stability of food sources and preventing crop pests and diseases are crucial in maintaining social stability and promoting economic development. In modern agriculture, computer vision has emerged as a tool to aid in pest and disease prevention. For instance, when calculating the overall fruit yield of fruit trees and identifying and categorising pests and diseases, traditional neural … Show more

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“…Chen et al 22 proposed a domain adaptive image recognition method based on a novel attention mechanism to address the issue of poor performance caused by data distribution differences between the target domain and the source domain in small sample of disease image recognition for rice. Hua et al 23 proposed a novel deep compressed sensing network model CSLSNet, which combines compressed sensing theory and traditional neural network technology, thus making the recognition accuracy of crop pests and diseases reache 90.08%. Li et al 24 proposed a fusion design MCD-Yolov5 model for accurate, efficient and real-time recognition of agricultural pests and diseases.…”
Section: Introductionmentioning
confidence: 99%
“…Chen et al 22 proposed a domain adaptive image recognition method based on a novel attention mechanism to address the issue of poor performance caused by data distribution differences between the target domain and the source domain in small sample of disease image recognition for rice. Hua et al 23 proposed a novel deep compressed sensing network model CSLSNet, which combines compressed sensing theory and traditional neural network technology, thus making the recognition accuracy of crop pests and diseases reache 90.08%. Li et al 24 proposed a fusion design MCD-Yolov5 model for accurate, efficient and real-time recognition of agricultural pests and diseases.…”
Section: Introductionmentioning
confidence: 99%