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Malaria Parasite Identification using Feature Based Recognition
Publication year - 2020
Publication title -
journal of science and technolgy
Language(s) - English
Resource type - Journals
ISSN - 2456-5660
DOI - 10.46243/jst.2020.v5.i3.pp248-250
Subject(s) - gametocyte , malaria , plasmodium malariae , feature (linguistics) , artificial intelligence , identification (biology) , plasmodium falciparum , plasmodium (life cycle) , parasite hosting , plasmodium vivax , computer science , feature extraction , plasmodium ovale , pattern recognition (psychology) , biology , immunology , linguistics , philosophy , world wide web , botany
Malaria is one in all the life threatening diseases. Diagnosis of diseases like malaria is very hooked in tothe identification of parasites in blood. Various methods are applied for this process. The majority of all methoduses machine learning to identify the malarial parasites. This method has shortcomings in long training time andalso the must be retrained if a replacement data emerged. Among all of the other various methods that are used,identification using feature based recognition is likely to be rarely used. This method is powerful within the termthat it doesn't require training process, but only an image sample from which the feature are visiting be extracted.During this paper, we design an identification process for blood parasites using one all told the famous localfeature extraction algorithms, i.e. SURF (Speeded-Up Robust Features). In our experiment, we evaluate the systemto spot Plasmodium parasites. During this experiment, we are focusing only on parasite’s gametocyte stage. Here,we use the system to spot whether or not the parasite is Plasmodium falciparum, Plasmodium malariae,Plasmodium ovale, or Plasmodium vivax.

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