Abstract

Citrus Huanglongbing (HLB), also named citrus greening disease, occurs worldwide and is known as a citrus cancer without an effective treatment. The symptoms of HLB are similar to those of nutritional deficiency or other disease. The methods based on single-source information, such as RGB images or hyperspectral data, are not able to achieve great detection performance. In this study, a multi-modal feature fusion network, combining a RGB image network and hyperspectral band extraction network, was proposed to recognize HLB from four categories (HLB, suspected HLB, Zn-deficient, and healthy). Three contributions including a dimension-reduction scheme for hyperspectral data based on a soft attention mechanism, a feature fusion proposal based on a bilinear fusion method, and auxiliary classifiers to extract more useful information are introduced in this manuscript. The multi-modal feature fusion network can effectively classify the above four types of citrus leaves and is better than single-modal classifiers. In experiments, the highest accuracy of multi-modal network recognition was 97.89% when the amount of data was not very abundant (1,325 images of the four aforementioned types and 1,325 pieces of hyperspectral data), while the single-modal network with RGB images only achieved 87.98% recognition and the single-modal network using hyperspectral information only 89%. Results show that the proposed multi-modal network implementing the concept of multi-source information fusion provides a better way to detect citrus HLB and citrus deficiency.

Highlights

  • Citrus Huanglongbing (HLB), called citrus greening, is commonly believed to be citrus cancer without effective treatment

  • The recognition accuracies of the single network using RGB images were 85, 84.51, and 87.98% based on ResNet50, VGG16, and ResNeXt101, respectively

  • It can be clearly seen that feature fusion based on the bilinear fusion method and the multimodal network of the auxiliary classifier can extract more useful information, and can better classify items with similar features

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Summary

INTRODUCTION

Citrus Huanglongbing (HLB), called citrus greening, is commonly believed to be citrus cancer without effective treatment. For plants with mild symptoms, PCR (Polymerase Chain Reaction), and other biotechnological techniques can be used to accurately identify plants This method has high accuracy and disease can be detected and eradicated in the early stages of plant infection. Yan et al (2021) proposed a fusion scheme combining a multi-dimensional convolutional neural network with a visualization method for detection of aphis gossypii glover infection in cotton leaves using hyperspectral imaging, which achieved good development prospects in plant disease identification. To increase the reliability and precision of HLB detection, in this study, a method is proposed that fuses two sources of information, namely, spectral and RGB images, by building a multi-modal deep-learning network to identify HLB leaves from four categories

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