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Application of Texture Descriptors to Facial Emotion Recognition in Infants

Ana Carro Martínez, Francisco A. Pujol, Higinio Mora

2020Applied Sciences25 citationsDOIOpen Access PDF

Abstract

The recognition of facial emotions is an important issue in computer vision and artificial intelligence due to its important academic and commercial potential. If we focus on the health sector, the ability to detect and control patients’ emotions, mainly pain, is a fundamental objective within any medical service. Nowadays, the evaluation of pain in patients depends mainly on the continuous monitoring of the medical staff when the patient is unable to express verbally his/her experience of pain, as is the case of patients under sedation or babies. Therefore, it is necessary to provide alternative methods for its evaluation and detection. Facial expressions can be considered as a valid indicator of a person’s degree of pain. Consequently, this paper presents a monitoring system for babies that uses an automatic pain detection system by means of image analysis. This system could be accessed through wearable or mobile devices. To do this, this paper makes use of three different texture descriptors for pain detection: Local Binary Patterns, Local Ternary Patterns, and Radon Barcodes. These descriptors are used together with Support Vector Machines (SVM) for their classification. The experimental results show that the proposed features give a very promising classification accuracy of around 95% for the Infant COPE database, which proves the validity of the proposed method.

Topics & Concepts

Local binary patternsSupport vector machineComputer scienceArtificial intelligenceFacial expressionPattern recognition (psychology)Facial recognition systemTexture (cosmology)Machine learningImage (mathematics)HistogramPediatric Pain Management TechniquesInfant Health and DevelopmentInfant Development and Preterm Care