Litcius/Paper detail

Deep Siamese Networks for Plant Disease Detection

Pavel Goncharov, Alexander Uzhinskiy, G. Ososkov, Andrey Nechaevskiy, Julia Zudikhina

2020EPJ Web of Conferences35 citationsDOIOpen Access PDF

Abstract

Crop losses are a major threat to the wellbeing of rural families, to the economy and governments, and to food security worldwide. The goal of our research is to develop a multi-functional platform to help the farming community to tilt against plant diseases. In our previous works, we reported about the creation of a special database of healthy and diseased plants’ leaves consisting of five sets of grapes images and proposed a special classification model based on a deep siamese network followed by k -nearest neighbors (KNN) classifier. Then we extended our database to five sets of images for grape, corn, and wheat – 611 images in total. Since after this extension the classification accuracy decreased to 86 %, we propose in this paper a novel architecture with a deep siamese network as feature extractor and a single-layer perceptron as a classifier that results in a significant gain of accuracy, up to 96 %.

Topics & Concepts

Classifier (UML)ExtractorArtificial intelligenceDeep learningComputer scienceArchitectureMultilayer perceptronPerceptronFood securityPattern recognition (psychology)AgricultureGeographyArtificial neural networkMachine learningEngineeringArchaeologyProcess engineeringSmart Agriculture and AIDate Palm Research StudiesSpectroscopy and Chemometric Analyses