Prototype-based classification for image analysis and its application to crop disease diagnosis

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Abstract

In this paper, we provide an application of Learning Vector Quantiza- tion (LVQ)-based techniques for solving a real-world problem. We apply LVQ for automated diagnosis of crop disease in cassava plants using features extracted from images of plants’ leaves. The problem reduces to a five class problem in which we attempt to distinguish between a leaf from a health plant and leaves representing four different viral and bacterial diseases in cassava. We discuss the problem under additional constraints that the solution must easily be deployable on a mobile device with limited processing power. In this study we explore the right configuration of type of algorithm and type of features extracted from the leaves that optimally solves the problem. We apply different variations of LVQ and compare them with stan- dard classification techniques (Naïve Bayes, SVM and KNN). Results point to a preference of color feature representations and LVQ-based algorithms.

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Mwebaze, E., & Biehl, M. (2016). Prototype-based classification for image analysis and its application to crop disease diagnosis. In Advances in Intelligent Systems and Computing (Vol. 428, pp. 329–339). Springer Verlag. https://doi.org/10.1007/978-3-319-28518-4_29

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