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Evaluating AAM fitting methods for facial expression recognition

机译:评估用于面部表情识别的AAM拟合方法

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The human face is a rich source of information for the viewer and facial expressions are a major component in judging a person's affective state, intention and personality. Facial expressions are an important part of human-human interaction and have the potential to play an equally important part in human-computer interaction. This paper evaluates various active appearance model (AAM) fitting methods, including both the original formulation as well as several state-of-the-art methods, for the task of automatic facial expression recognition. The AAM is a powerful statistical model for modelling and registering deformable objects. The results of the fitting process are used in a facial expression recognition task using a region-based intermediate representation related to action units, with the expression classification task realised using a support vector machine. Experiments are performed for both person-dependent and person-independent setups. Overall, the best facial expression recognition results were obtained by using the iterative error bound minimisation method, which consistently resulted in accurate face model alignment and facial expression recognition even when the initial face detection used to initialise the fitting procedure was poor.
机译:人脸是观众的丰富信息来源,面部表情是判断一个人的情感状态,意图和个性的主要组成部分。面部表情是人与人互动的重要组成部分,并且有可能在人机交互中扮演同样重要的角色。本文针对自动表情识别的任务,评估了各种主动外观模型(AAM)拟合方法,包括原始配方以及几种最先进的方法。 AAM是用于建模和注册可变形对象的强大统计模型。拟合过程的结果用于面部表情识别任务中,该任务使用与动作单位相关的基于区域的中间表示,而表情分类任务则使用支持向量机实现。针对个人和个人独立的设置进行实验。总体而言,使用迭代错误界限最小化方法可获得最佳的面部表情识别结果,即使在用于初始化拟合过程的初始面部检测效果较差的情况下,该结果也始终可以实现准确的面部模型对齐和面部表情识别。

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