Automatic detection and severity assessment of crop diseases using image pattern recognition

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Abstract

Disease diagnosis and severity assessment are necessary and critical for predicting the likely crop yield losses, evaluating the economic impact of the disease, and determining whether preventive treatments are worthwhile or particular control strategies could be taken. In this work, we propose to make advances in the field of automatic detection and diagnosis and severity assessment of crop diseases using image pattern recognition.We have developed a two-stage crop disease pattern recognition systemwhich can automatically identify crop diseases and assess sevrity based on combination of marker-controlled watershed segmentation, superpixel based feature analysis and classification. We have conducted experimental evaluation using different feature selection and classification methods. The experimental result shows that the proposed approach can accurately detect crop diseases (i.e. Septoria and Yellow rust, which are the two most important and major types of wheat diseases in UK and across the world) and assess the disease severity with efficient processing speed.

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Han, L., Haleem, M. S., & Taylor, M. (2016). Automatic detection and severity assessment of crop diseases using image pattern recognition. Studies in Computational Intelligence, 647, 283–300. https://doi.org/10.1007/978-3-319-33353-3_15

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