JoF, Vol. 9, Pages 1131: Detection Method of Fungal Spores Based on Fingerprint Characteristics of Diffraction–Polarization Images

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JoF, Vol. 9, Pages 1131: Detection Method of Fungal Spores Based on Fingerprint Characteristics of Diffraction–Polarization Images

Journal of Fungi doi: 10.3390/jof9121131

Authors: Yafei Wang Xiaodong Zhang Mohamed Farag Taha Tianhua Chen Ning Yang Jiarui Zhang Hanping Mao

The most significant aspect of promoting greenhouse productivity is the timely monitoring of disease spores and applying proactive control measures. This paper introduces a method to classify spores of airborne disease in greenhouse crops by using fingerprint characteristics of diffraction–polarized images and machine learning. Initially, a diffraction–polarization imaging system was established, and the diffraction fingerprint images of disease spores were taken in polarization directions of 0°, 45°, 90° and 135°. Subsequently, the diffraction–polarization images were processed, wherein the fingerprint features of the spore diffraction–polarization images were extracted. Finally, a support vector machine (SVM) classification algorithm was used to classify the disease spores. The study’s results indicate that the diffraction–polarization imaging system can capture images of disease spores. Different spores all have their own unique diffraction–polarization fingerprint characteristics. The identification rates of tomato gray mold spores, cucumber downy mold spores and cucumber powdery mildew spores were 96.02%, 94.94% and 96.57%, respectively. The average identification rate of spores was 95.85%. This study can provide a research basis for the identification and classification of disease spores.

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