Identification of Malaria Parasite Patterns With Gray Level Co-Occurance
Matrix Algorithm (GLCM)

Dublin Core

Title

Identification of Malaria Parasite Patterns With Gray Level Co-Occurance
Matrix Algorithm (GLCM)

Subject

: Parasites, Malaria, GCLM, Extraction, Patterns, Identification

Description

The results of the test using 5 data of malaria parasite test imagery found that image 1 has an average accuracy value of the
energy of 0.55627, homogeneity average of 0.8371, PSNR of 6.1336db, and MSE of 0.24358. Image 2 has an average energy
accuracy value of 0.22274, an average Homonegity of 0.98532, a PSNR of 6.1336db, and an MSE of 0.24358. Image 3 has
an energy average accuracy value of 0.28735, a Homonegity average accuracy value of 0.9793, a PSNR of 6.133db, and an
MSE of 0.24358. Image 4 has an energy average accuracy value of 0.32907 and an average homogeneity accuracy value of
0.97073, PSNR 6.133db, and MSE 0.24358. Image 5 has an average accuracy value of 0.74102, Homonegity average of
0.99844, PSNR of 6.133db, and MSE of 0.4358. Image 6 has an accuracy value of 0.34758 energy, an average accuracy
value of homogeneity of 0.99129, a PNSR of 6.133db, and an MSE of 0.24358. Obtained the rule if the average value of
energy > = 0.50 then the pattern of malaria parasites is very clear, namely Image 1 and image 5 with a pattern of malaria
parasites is very clear

Creator

Annas Prasetio1
, Rika Rosnelly2
, Wanayumini3

Publisher

University Of Potensi Utama Medan

Date

30-06-2022

Contributor

Fajar bagus W

Format

pDF

Language

Indonesia

Type

Text

Files

Collection

Citation

Annas Prasetio1 , Rika Rosnelly2 , Wanayumini3, “Identification of Malaria Parasite Patterns With Gray Level Co-Occurance
Matrix Algorithm (GLCM),” Repository Horizon University Indonesia, accessed June 29, 2025, https://repository.horizon.ac.id/items/show/9170.