Abstract

The accurate identification of apple leaf diseases is of great significance for controlling the spread of diseases and ensuring the healthy and stable development of the apple industry. In order to improve detection accuracy and efficiency, a deep learning model, which is called the Coordination Attention EfficientNet (CA-ENet), is proposed to identify different apple diseases. First, a coordinate attention block is integrated into the EfficientNet-B4 network, which embedded the spatial location information of the feature by channel attention to ensure that the model can learn both the channel and spatial location information of important features. Then, a depth-wise separable convolution is applied to the convolution module to reduce the number of parameters, and the h-swish activation function is introduced to achieve the fast and easy to quantify the process. Afterward, 5,170 images are collected in the field environment at the apple planting base of the Northwest A&F University, while 3,000 images are acquired from the PlantVillage public data set. Also, image augmentation techniques are used to generate an Apple Leaf Disease Identification Data set (ALDID), which contains 81,700 images. The experimental results show that the accuracy of the CA-ENet is 98.92% on the ALDID, and the average F1-score reaches .988, which is better than those of common models such as the ResNet-152, DenseNet-264, and ResNeXt-101. The generated test dataset is used to test the anti-interference ability of the model. The results show that the proposed method can achieve competitive performance on the apple disease identification task.

Highlights

  • The apple industry is one of the most important fruit industries in China

  • In order to evaluate the performance of the proposed method, multiple state-of-the-art methods were applied to the Model Robustness Test Data set (MRTD)

  • An improved attention-based deep convolutional neural networks (CNNs) to identify common apple leaf diseases to support the efficient management of orchards is proposed in this study

Read more

Summary

Introduction

The apple industry is one of the most important fruit industries in China. The frequent occurrence of apple leaf diseases may seriously restrict the healthy and stable development of the apple industry. The diseases of a large number of industrialized apple orchards mainly rely on human vision for recognition, which requires a high degree of reliance on disease experts. Apple Leaf Disease Identification difficult to meet the demand for high-precision identification for intelligent orchards (Dutot et al, 2013). The problems previously discussed will lead to a large lag in the tracking management process of orchard diseases, which causes the improper use of pesticides and reduces the quality of fruit. The accurate identification of diseases is of great significance to improve the yield and quality of apples and to cultivate diseaseresistant varieties

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call