An Ada-Random Forests based grammatical facial expressions recognition approach

Md Taufeeq Uddin
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引用次数: 5

Abstract

The automatic recognition of facial expressions has a tremendous impact in many research fields, especially in the field of sign language since facial expressions contribute towards the formation of grammatical structure of the language that reduce the ambiguity of the sign language understanding. However, the automatic recognition of grammatical facial expressions is still a very challenging task due to the signer-based variation of the grammatical facial expressions, and the co-occurrence of manual and non-manual signs. This paper presents a novel Ada-Random Forests framework for recognizing the grammatical facial expressions used in Brazilian sign language. In this approach, an Ada-Boost feature selection algorithm is applied to select compact feature subsets from the numerous raw extracted features to reduce the computational time as well as to improve the recognition rate of the system; then, selected features are fed to a robust random forests classifier, given their capability to handle high-dimensional and unbalanced data, to recognize the grammatical facial expressions. The evaluation results of the experiments conducted on the first publicly available benchmark data set on Brazilian sign language indicate that the proposed technique improve the recognition metric by as much as 7.5% over the previously applied technique.
一种基于ada随机森林的语法面部表情识别方法
面部表情的自动识别在许多研究领域都有着巨大的影响,尤其是在手语领域,因为面部表情有助于语言语法结构的形成,减少了手语理解的模糊性。然而,由于语法面部表情的手势变化,以及手势和非手势的共存,语法面部表情的自动识别仍然是一项非常具有挑战性的任务。本文提出了一种新的ada -随机森林框架,用于识别巴西手语中使用的语法面部表情。该方法采用Ada-Boost特征选择算法,从大量原始提取的特征中选择紧凑的特征子集,减少了计算时间,提高了系统的识别率;然后,选择的特征被馈送到鲁棒随机森林分类器,给定其处理高维和不平衡数据的能力,以识别语法面部表情。在第一个公开可用的巴西手语基准数据集上进行的实验评估结果表明,所提出的技术比先前应用的技术提高了7.5%的识别指标。
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