2023
DOI: 10.25081/rib.2023.v14.8214
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Improvement of plant disease classification accuracy with generative model-synthesized training datasets

Abstract: Digitalization in agriculture requires critical research into applications of artificial intelligence to various specialization domains. This work aimed at investigating the application of image synthesis technology to the mitigation of the data volume constraint to digital plant disease phenotyping accuracy. We designed an experiment involving the use of a deep convolutional generative adversarial network (DC-GAN) to synthesize photorealistic data for healthy and bacterial spot disease-infected tomato leaves.… Show more

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“…The quantity and quality of the dataset are crucial factors that significantly impact model performance. Albert et al [20] applied image synthesis techniques to alleviate the limitation of data quantity on the accuracy of digital plant disease phenotyping. They utilized two classes of tomato data, namely healthy data and bacterial spot disease data, from the PlantVillage dataset.…”
Section: Introductionmentioning
confidence: 99%
“…The quantity and quality of the dataset are crucial factors that significantly impact model performance. Albert et al [20] applied image synthesis techniques to alleviate the limitation of data quantity on the accuracy of digital plant disease phenotyping. They utilized two classes of tomato data, namely healthy data and bacterial spot disease data, from the PlantVillage dataset.…”
Section: Introductionmentioning
confidence: 99%