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A Novel Approach on Infant Facial Pain Classification using Multi Stage Classifier and Geometrical-Textural Features Combination

机译:基于多阶段分类器和几何纹理特征结合的婴儿面部疼痛分类的新方法

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摘要

Infants are unable to communicate pain, they cry to express their pain. In this paper we describe the most effective feature for infant facial pain classification. The image dataset was classified by medical doctors and nurses based on cortisol hormone difference and FLACC (Face, Legs, Activity, Cry, Consolability) measurement. In this paper we try a number of features based on Action Unit (AU) for infant facial pain classification and discover that the best features are combination between geometrical and textural features. We trained our own Active Shape Model (ASM) and extracted the geometrical features based on landmark points found by our ASM. The textural features are extracted using Local Binary Patterns (LBP) from multiple facial patches. We also experiment with two stage pain classification preceded by a cry detection system, and concluded that this scenario combined with geometrical and textural feature produce a very high F1 score for infant facial pain classification.
机译:婴儿无法传达痛苦,他们哭着表达自己的痛苦。在本文中,我们描述了婴儿面部疼痛分类的最有效功能。图像数据集由医生和护士根据皮质醇激素差异和FLACC(面部,腿部,活动,哭泣,可溶性)测量进行分类。在本文中,我们尝试基于动作单元(AU)进行婴儿面部疼痛分类的多种功能,并发现最好的功能是几何和纹理特征之间的组合。我们训练了自己的主动形状​​模型(ASM),并根据ASM找到的界标点提取了几何特征。使用局部二进制模式(LBP)从多个面部补丁中提取纹理特征。我们还对通过哭泣检测系统进行的两阶段疼痛分类进行了实验,得出结论,这种情况与几何和纹理特征相结合,可为婴儿面部疼痛分类产生非常高的F1分数。

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