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A Lightweight Classifier for Facial Expression Recognition based on Evolutionary SVM Ensembles

机译:基于进化SVM合奏的面部表情识别轻量级分类器

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Evaluation criteria for solutions to facial expression recognition usually bias to classification accuracy. Hence, the utilization of deep neural networks has become a straightforward and popular option in theoretical studies despite the limitations in real usage from data collection, storage space, and power consumption issues. Our work proposes a practical alternative that is consisted of a minimum model configuration and still matches the state-of-the-art performance of deep learning approaches. We establish a conventional two-stage procedure, where feature extraction of a facial subject depends on a universal filter, histogram of oriented gradients (HOG), and classification is implemented through an ensemble learning approach using basic binary classifiers, support vector machines (SVM). Our two designs considerably improve prediction accuracy. One is that we adopt post-hoc statistics, rather than a priori expectations, to interpret the outputs of weak classifiers. The other is we design a genetic algorithm to search for the optimal ensemble of weak classifiers efficiently. Our method demonstrates supreme performance in several benchmark datasets and even outperforms those based on deep learning from big data. Besides, from a practical viewpoint, our model shows the advantage and flexibility of its storage size and power consumption. Lastly, we further display how the evolutionary SVM ensembles in our model contain information about the dependency and similarity among facial expression categories.
机译:对面部表情识别的解决方案的评价标准通常偏向分类准确性。因此,尽管来自数据收集,存储空间和功耗问题的真实用途的限制,但深度神经网络的利用已成为理论研究中的直接和流行的选择。我们的工作提出了一种实用的替代方案,该替代方案由最低模型配置组成,仍然符合深度学习方法的最先进的性能。我们建立传统的两阶段过程,其中面部对象的特征提取取决于通用滤波器,通过使用基本二进制分类器的集合学习方法来实现定向梯度(HOG)的直方图,并通过支持向量机(SVM)来实现分类。 。我们的两种设计显着提高了预测准确性。一个是,我们采用HOC统计数据,而不是先验期望,解释弱分类器的产出。另一种是我们设计一种遗传算法,用于有效地搜索弱分类器的最佳集合。我们的方法在多个基准数据集中展示了最高性能,甚至超越了基于大数据的深度学习的表现。此外,从实际的观点来看,我们的模型显示了其存储尺寸和功耗的优势和灵活性。最后,我们进一步展示了我们模型中的进化SVM集合如何包含面部表情类别中的依赖性和相似性的信息。

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