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Comparing ensemble strategies for deep learning: An application to facial expression recognition

机译:深度学习的整体策略比较:在面部表情识别中的应用

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Recent works have shown that Convolutional Neural Networks (CNNs), because of their effectiveness in feature extraction and classification tasks, are suitable tools to address the Facial Expression Recognition (FER) problem. Further, it has been pointed out how ensembles of CNNs allow improving classification accuracy. Nevertheless, a detailed experimental analysis on how ensembles of CNNs could be effectively generated in the FER context has not been performed yet, although it would have considerable value for improving the results obtained in the FER task. This paper aims to present an extensive investigation on different aspects of the ensemble generation, focusing on the factors that influence the classification accuracy on the FER context. In particular, we evaluate several strategies for the ensemble generation, different aggregation schemes, and the dependence upon the number of base classifiers in the ensemble. The final objective is to provide some indications for building up effective ensembles of CNNs. Specifically, we observed that exploiting different sources of variability is crucial for the improvement of the overall accuracy. To this aim, pre-processing and pre-training procedures are able to provide a satisfactory variability across the base classifiers, while the use of different seeds does not appear as an effective solution. Bagging ensures a high ensemble gain, but the overall accuracy is limited by poor-performing base classifiers. The impact of increasing the ensemble size specifically depends on the adopted strategy, but also in the best case the performance gain obtained by involving additional base classifiers becomes not significant beyond a certain limit size, thus suggesting to avoid very large ensembles. Finally, the classic averaging voting proves to be an appropriate aggregation scheme, achieving accuracy values comparable to or slightly better than the other experimented operators. (C) 2019 Elsevier Ltd. All rights reserved.
机译:最近的工作表明,卷积神经网络(CNN)由于其在特征提取和分类任务中的有效性,是解决面部表情识别(FER)问题的合适工具。此外,已经指出了CNN的集合如何允许改善分类精度。尽管如此,关于如何在FER环境中有效生成CNN集合的详细实验分析尚未进行,尽管它对于改善FER任务中获得的结果具有相当大的价值。本文旨在对合奏生成的不同方面进行广泛的研究,重点关注影响FER上下文中分类准确性的因素。特别是,我们评估了用于集成生成的几种策略,不同的聚合方案以及对集成中基本分类器数量的依赖性。最终目标是为建立有效的CNN集成提供一些迹象。具体而言,我们观察到,利用不同的可变性来源对于提高整体准确性至关重要。为此,预处理和预训练程序能够在基本分类器上提供令人满意的可变性,而使用不同的种子似乎并不是有效的解决方案。套袋可确保较高的整体增益,但整体精度受到性能不佳的基础分类器的限制。增大合奏大小的影响具体取决于所采用的策略,但在最佳情况下,超过特定的限制大小,通过涉及其他基本分类器获得的性能增益也变得不明显,因此建议避免使用非常大的合奏。最后,经典的平均投票被证明是一种合适的聚合方案,其准确度值可与其他实验过的运营商相媲美或稍好。 (C)2019 Elsevier Ltd.保留所有权利。

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