Discrimination of leaf diseases in Maize/Soybean intercropping system based on hyperspectral imaging

Front Plant Sci. 2024 Dec 9:15:1434163. doi: 10.3389/fpls.2024.1434163. eCollection 2024.

Abstract

In order to achieve precise discrimination of leaf diseases in the Maize/Soybean intercropping system, i.e. leaf spot disease, rust disease, mixed leaf diseases, this study utilized hyperspectral imaging and deep learning algorithms for the classification of diseased leaves of maize and soybean. In the experiments, hyperspectral imaging equipment was used to collect hyperspectral images of leaves, and the regions of interest were extracted within the spectral range of 400 to 1000 nm. These regions included one or more infected areas on the leaves to obtain hyperspectral data. This approach aimed to enhance the accurate discrimination of different types of diseases, providing more effective technical support for the detection and control of crop diseases. The preprocessing of hyperspectral data involved four methods: Savitzky-Golay (SG), Standard Normal Variate (SNV), Multiplicative Scatter Correction (MSC) and 1st Derivative (1st Der). The 1st Der was found to be the optimal preprocessing method for hyperspectral data of maize and soybean diseases. Competitive Adaptive Reweighted Sampling (CARS), Successive Projections Algorithm (SPA) and Principal Component Analysis (PCA) were employed for feature extraction on the optimal preprocessed data. The Support Vector Machines (SVM), Bidirectional Long Short-Term Memory Network (BiLSTM) and Dung Beetle Optimization-Bidirectional Long Short-Term Memory Network (DBO-BiLSTM) were established for the discrimination of maize and soybean diseases. Comparative analysis indicated that, in the classification of maize and soybean diseases, the DBO-BiLSTM model based on the CARS extraction method (1st Der-CARS-DBO-BiLSTM) demonstrated the highest classification rate, reaching 98.7% on the test set. The research findings suggest that integrating hyperspectral imaging with both traditional and deep learning methods is a viable and effective approach for classifying diseases in the intercropping model of maize and soybean. These results offer a novel method and a theoretical foundation for the non-invasive, precise, and efficient identification of diseases in the intercropping model of maize and soybean, carrying positive implications for agricultural production.

Keywords: crop disease detection; hyperspectral feature extraction; intelligent optimization; machine learning; non-invasive identification.

Grants and funding

The author(s) declare that financial support was received for the research, authorship, and/or publication of this article. Key R&D Program of Shandong Province, China under Grant ZR202211070163; Shandong Province Agricultural Major Technology Collaborative Promotion Plan, China under Grant SDNYXTTG-2023-03, Research and Integrated Demonstration of High Yield and Efficiency Enhancement Technology for Huanghuai Maize/Soybeans Intercropping Planting, China under Grant 2022YFD2300903, Shandong Province Agricultural Machinery R&D, Manufacturing, Promotion and Application Integration Pilot Project, China under Grant NJYTHSD-202305.