Analisa Citra Warna Darah Reject Berdasarkan Fitur Histogram Menggunakan KNN
DOI:
https://doi.org/10.51903/elkom.v18i2.3332Keywords:
Platelete Concentrate (TC), K-Nearest Neighbor (KNN), Histogram Features, SMOTE, Quality ClassificationAbstract
Manual quality assessment of Platelet Concentrate (TC) is highly subjective and inconsistent, necessitating an objective, automated classification system. This study aims to develop a computationally efficient, low-cost model for TC quality classification using Histogram Features extracted from grayscale images combined with the K-Nearest Neighbor (KNN) algorithm. The methodology employed critical preprocessing steps, including StandardScaler for normalization and SMOTE for balancing the training data, followed by optimization across K=1 to K=30. The optimal model achieved a maximum accuracy of 69.23% at K=6, with an F1-Score of 71.43%, confirming robust performance on the imbalanced testing set. The results validate the effectiveness of the Histogram-KNN approach as a consistent and reliable decision support system for rapid TC quality screening in resource-limited settings.
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