MUSHROOM SPECIES DETECTION USING IMAGE PROCESSING TECHNIQUES

MUSHROOM SPECIES DETECTION USING IMAGE PROCESSING TECHNIQUES

There are many kinds of mushrooms in the world, some of them are edible and some are poisonous. People may want to eat the mushrooms they encounter in nature, as a result of which they may become poisoned or even die. In this research image processing techniques, K-NN and Naive Bayes algorithms were used to classify mushroom species in Selçuk University Campus. As a result of the research, K-NN algorithm achieved 80% and Naive Bayes algorithm achieved 96% accuracy.

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