Infant pain detection with homomorphic filter and fuzzy k-NN classifier
Date
2014-08Author
Muhammad Naufal, Mansor
Ahmad Kadri, Junoh
Amran, Ahmed
Kamarudin, Hussin, Brig. Jen. Dato' Prof. Dr.
Azrini, Idris
Metadata
Show full item recordAbstract
Newborn pain is a non-stationary made by babies in reaction to certain circumstances. This infant facial expression can be used to recognize physical or psychology condition of newborn. The goal of this study is to evaluate the performance of illumination levels for infant pain classification. Local Binary Pattern (LBP) features are computed at Fuzzy k-NN classifier. Eight different performance measurements such as Sensitivity, Specificity, Accuracy, Area under Curve (AUC), Cohen's kappa (k), Precession, F-Measure and Time Consumption are performed. Fuzzy k-NN classifier is employed to classify the newborn pain. The outcomes accentuated that the suggested features and classification algorithms can be employed to assist the medical professionals for diagnosing pathological condition of newborn pain.