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Title: | Improvement of Hybrid Image Enhancement for Detection and Classification of Malaria Disease Types and Stages with Artificial Intelligence |
Authors: | Bob Subhan, Riza |
Keywords: | Artificial Intelligence, Malaria, Dark Stretching, Contrast stretching, histogram equalization, and dark and contrast stretching. |
Issue Date: | 27-May-2022 |
Series/Report no.: | Volume 11, Issue 2;pages 535-542 |
Abstract: | Malaria is an infectious disease throughout the world where the disease is transmitted by infected female Anopheles mosquitoes. Malaria has some symptoms that are almost like COVID-19. Malaria has several other symptoms, characterized by chills, anemia, cold sweats, nausea and vomiting, and a sudden drop in blood pressure. Identification of the type of malaria begins with preprocessing, feature extraction, and classification for identification. Image improvement is part of the preprocessing stage to improve image quality so that the malaria parasite object in the image can be seen clearly. This study tries to improve the algorithm with hybrid dark and contrast stretching. Performance evaluation of malaria parasite image improvement using Mean Square Error (MSE) and Peak Signal Noise Ratio (PSNR). The results obtained with the improvement of dark hybrids and contrast stretching can improve the image quality of malaria parasite objects with MSE value = 0.0095 and PSNR value = 22.8404, compared with dark stretching, contrast stretching, histogram equalization. |
Description: | Malaria is an infectious disease that occurs all over the world, especially in tropical climates. The Ministry of Health said that data on malaria cases is still difficult to eliminate because several regions have not succeeded in eliminating any of these malaria cases, such as in Papua, Maluku, and West Papua. Director of Prevention and Control of Vector and Zoonotic Diseases of the Ministry of Health Didik Budijianto explained that finding malaria cases is a challenge, especially during the COVID-19 pandemic [1]. Factors causing malaria are knowledge and attitudes of the community towards malaria. Infections caused by malaria can cause death, especially in high-risk groups such as pregnant women, infants, children under five. Malaria has symptoms that are almost like COVID-19 which are characterized by clinical symptoms, namely fever, chills, anemia, cold sweat, nausea and vomiting, and a sudden drop in blood pressure [1], [2]. Malaria is caused by the Plasmodium parasite and spread by a female Anopheles mosquito bite. Human Plasmodium falciparum, vivax, malaria, and oval [3]. Some standard tests are carried out by experts to identify malaria, using microscopic tools, ant it takes long time which require a laboratory to get the type of parasite and its stage. We need a system that can make it easy to identify the type of malaria parasite and its stage. Several stages will be carried out for image identification for the type of malaria, starting with the preprocessing stage, feature extraction, and classification for identification. The image improvement stage is part of the preprocessing stage where this stage is the main priority because if the |
URI: | http://repository.potensi-utama.ac.id/jspui/jspui/handle/123456789/5508 |
ISSN: | 2217-8309 |
Appears in Collections: | Untitled |
Files in This Item:
File | Description | Size | Format | |
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6. Q3_Improvement of Hybrid Image Enhancement for Detection and Classification of Malaria Disease Types and.pdf | 814.26 kB | Adobe PDF | View/Open |
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