A Graph-Related High-Order Neural Network Architecture via Feature Aggregation Enhancement for Identification Application of Diseases and Pests

Author:

Kong Jianlei1ORCID,Yang Chengcai1ORCID,Xiao Yang1ORCID,Lin Sen2ORCID,Ma Kai3ORCID,Zhu Qingzhen4ORCID

Affiliation:

1. School of Artificial Intelligence, Beijing Technology and Business University, Beijing 100048, China

2. Research Center of Intelligent Equipment Technology, Beijing Academy of Agriculture and Forestry Sciences, Beijing 100097, China

3. School of Engineering, Beijing Forestry University, Beijing 100086, China

4. School of Agricultural Equipment Engineering, Jiangsu University, Zhenjiang, Jiangsu 212013, China

Abstract

Diseases and pests are essential threat factors that affect agricultural production, food security supply, and ecological plant diversity. However, the accurate recognition of various diseases and pests is still challenging for existing advanced information and intelligence technologies. Disease and pest recognition is typically a fine-grained visual classification problem, which is easy to confuse the traditional coarse-grained methods due to the external similarity between different categories and the significant differences among each subsample of the same category. Toward this end, this paper proposes an effective graph-related high-order network with feature aggregation enhancement (GHA-Net) to handle the fine-grained image recognition of plant pests and diseases. In our approach, an improved CSP-stage backbone network is first formed to offer massive channel-shuffled features in multiple granularities. Secondly, relying on the multilevel attention mechanism, the feature aggregation enhancement module is designed to exploit distinguishable fine-grained features representing different discriminating parts. Meanwhile, the graphic convolution module is constructed to analyse the graph-correlated representation of part-specific interrelationships by regularizing semantic features into the high-order tensor space. With the collaborative learning of three modules, our approach can grasp the robust contextual details of diseases and pests for better fine-grained identification. Extensive experiments on several public fine-grained disease and pest datasets demonstrate that the proposed GHA-Net achieves better performances in accuracy and efficiency surpassing several other existing models and is more suitable for fine-grained identification applications in complex scenes.

Funder

National Basic Research Program of China

Publisher

Hindawi Limited

Subject

General Mathematics,General Medicine,General Neuroscience,General Computer Science

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