Classification of parasite egg cells using gray level cooccurence matrix and kNN.
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Date
2016
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Biomedical Research
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Abstract
Parasite eggs are around 20 to 80 μm dimensions, and they can be seen under microscopes only and
their detection requires visual analyses of microscopic images, which requires human expertise and long
analysis time. Besides visual analysis is very error prone to human procedures. In order to automatize
this process, a number of studies are proposed in the literature. But there is still a gap between the
preferred performance and the reported ones and it is necessary to increase the performance of the
automatic parasite egg classification approaches. In this study a learning based statistical pattern
recognition approach for parasite egg classification is proposed that will both decrease the time required
for the manual classification by an expert and increase the performance of the previously suggested
automated parasite egg classification approaches. The proposed method uses Gray-Level Co-occurrence
Matrix as the feature extractor, which is a texture based statistical method that can differentiate the
parasite egg cells based on their textures, and the k-Nearest Neighbourhood (kNN) classifier for the
classification. The proposed method is tested on 14 parasite egg types commonly seen in humans. The
results show that proposed method can classify the parasite egg cells with a performance rate of 99%.
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computer engineering