2022
DOI: 10.30595/juita.v10i2.13833
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Gender Classification for Anime Character Face Image Using Random Forest Classifier Method and GLCM Feature Extraction

Abstract: Japan has many entertaining and unique artworks, especially its signature animation, called anime. Anime is an animation art that is unique in that the characterizations, characters, and storylines are made to resemble human life. The characters have 2 genders called male and female with unique visuals and are the characteristics of each anime character to entertain the audience. Training large-scale data and complex textures because not all of the anime images owned are of high quality, making classification … Show more

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Cited by 3 publications
(2 citation statements)
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“…2.  Pre-processing [23], after going through the data analysis stage, the uploaded dataset will then go through the pre-processing stage which consists of data normalization and data augmentation to simplify the classification process. Before the data goes through various image processing processes, the first step is to fetch/load the dataset that has been uploaded to Google Drive using the drive library from Google Colab.…”
Section: Methodsmentioning
confidence: 99%
“…2.  Pre-processing [23], after going through the data analysis stage, the uploaded dataset will then go through the pre-processing stage which consists of data normalization and data augmentation to simplify the classification process. Before the data goes through various image processing processes, the first step is to fetch/load the dataset that has been uploaded to Google Drive using the drive library from Google Colab.…”
Section: Methodsmentioning
confidence: 99%
“…Then, the feature points divide these visually significant parts, yet they also play an important role in human shape perception. To ensure that there are visually meaningful parts to correspond, it is necessary that these feature points are correctly identified and correctly corresponded, i.e., the final gradient results will match our human visual characteristics [19][20].…”
Section: Calculation Of Feature Pointsmentioning
confidence: 99%