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Assessing Accuracy of Ensemble Learning for Facial Expression Recognition with CNNs

机译:用CNNS评估面部表情识别的集合学习的准确性

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Automatic facial expression recognition has recently attracted the interest of researchers in the field of computer vision and deep learning. Convolutional Neural Networks (CNNs) have proved to be an effective solution for feature extraction and classification of emotions from facial images. Further, ensembles of CNNs are typically adopted to boost classification performance. In this paper, we investigate two straightforward strategies adopted to generate error-independent base classifiers in an ensemble: the first strategy varies the seed of the pseudo-random number generator for determining the random components of the networks; the second one combines the seed variation with different transformations of the input images. The comparison between the strategies is performed under two different scenarios, namely, training from scratch an ad-hoc architecture and fine-tuning a state-of-the-art model. As expected, the second strategy, which adopts a higher level of variability, yields to a more effective ensemble for both the scenarios. Furthermore, training from scratch an ad-hoc architecture allows achieving on average a higher classification accuracy than fine-tuning a very deep pretrained model. Finally, we observe that, in our experimental setup, the increase of the ensemble size does not guarantee an accuracy gain.
机译:自动面部表情识别最近引起了计算机视觉和深度学习领域的研究人员的兴趣。卷积神经网络(CNNS)已被证明是对来自面部图像的特征提取和情绪分类的有效解决方案。此外,通常采用CNN的集合来提高分类性能。在本文中,我们调查了在集合中产生错误独立的基本分类器的两个直接策略:第一个策略改变了用于确定网络随机组件的伪随机数发生器的种子;第二个将种子变化与输入图像的不同变换结合在一起。策略之间的比较是在两个不同的场景下进行,即,从划痕训练Ad-hoc架构和微调最先进的模型。正如预期的那样,采用更高水平的可变性的第二次策略,为这两个方案产生更有效的合奏。此外,从划痕训练Ad-hoc架构允许平均实现比微调一个非常深的预制模型更高的分类精度。最后,我们观察到,在我们的实验设置中,集合尺寸的增加不保证准确性增益。

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