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Tomato Fungal Disease Diagnosis Using Few-Shot Learning Based on Deep Feature Extraction and Cosine Similarity

Seyed Mohamad Javidan, Yiannis Ampatzidis, Ahmad Banakar, Keyvan Asefpour Vakilian, K Rahnama

2024AgriEngineering17 citationsDOIOpen Access PDF

Abstract

Tomato fungal diseases can cause significant economic losses to farmers. Advanced disease detection methods based on symptom recognition in images face challenges when identifying fungal diseases in tomatoes, especially with limited training images. This study utilized novel techniques designed for limited data scenarios, such as one-shot and few-shot learning, to identify three tomato fungal diseases, i.e., Alternaria solani, Alternaria alternata, and Botrytis cinerea. Automated feature extraction was performed using the ResNet-12 deep model, and a cosine similarity approach was employed during shot learning. The accuracy of diagnosing the three diseases and healthy leaves using the 4-way 1-shot learning method was 91.64, 92.37, 92.93, and 100%. For the 4-way 3-shot learning method, the accuracy improved to 92.75, 95.07, 96.63, and 100%, respectively. These results demonstrate that the proposed method effectively reduces the dependence on experts labeling images, working well with small datasets and enhancing plant disease identification.

Topics & Concepts

Cosine similarityArtificial intelligenceSimilarity (geometry)Feature extractionPattern recognition (psychology)Shot (pellet)Feature (linguistics)Deep learningComputer scienceDiscrete cosine transformExtraction (chemistry)Single shotMaterials sciencePhysicsImage (mathematics)OpticsChemistryPhilosophyMetallurgyChromatographyLinguisticsSmart Agriculture and AISpectroscopy and Chemometric AnalysesAdvanced Chemical Sensor Technologies
Tomato Fungal Disease Diagnosis Using Few-Shot Learning Based on Deep Feature Extraction and Cosine Similarity | Litcius