Ensembles of Deep Neural Networks for Action Recognition in Still Images

S. Mohammadi, Sina Ghofrani Majelan, S. B. Shokouhi
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引用次数: 14

Abstract

Despite the fact that notable improvements have been made recently in the field of feature extraction and classification, human action recognition is still challenging, especially in images, in which, unlike videos, there is no motion. Thus, the methods proposed for recognizing human actions in videos cannot be applied to still images. A big challenge in action recognition in still images is the lack of large enough datasets, which is problematic for training deep Convolutional Neural Networks (CNNs) due to the overfitting issue. In this paper, by taking advantage of pre-trained CNNs, we employ the transfer learning technique to tackle the lack of massive labeled action recognition datasets. Furthermore, since the last layer of the CNN has class-specific information, we apply an attention mechanism on the output feature maps of the CNN to extract more discriminative and powerful features for classification of human actions. Moreover, we use eight different pre-trained CNNs in our framework and investigate their performance on Stanford 40 dataset. Finally, we propose using the Ensemble Learning technique to enhance the overall accuracy of action classification by combining the predictions of multiple models. The best setting of our method is able to achieve 93.17% accuracy on the Stanford 40 dataset.
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静止图像动作识别的深度神经网络集成
尽管最近在特征提取和分类领域取得了显著的进步,但人类动作识别仍然具有挑战性,特别是在图像中,与视频不同,图像中没有运动。因此,所提出的识别视频中人类行为的方法不能应用于静止图像。静止图像动作识别的一大挑战是缺乏足够大的数据集,这对于训练深度卷积神经网络(cnn)来说是一个问题,因为过度拟合问题。在本文中,我们利用预训练的cnn,采用迁移学习技术来解决缺乏大量标记动作识别数据集的问题。此外,由于CNN的最后一层具有特定类别的信息,我们在CNN的输出特征映射上应用了注意机制,以提取更具判别性和强大的特征,用于对人类行为进行分类。此外,我们在我们的框架中使用了8种不同的预训练cnn,并研究了它们在Stanford 40数据集上的表现。最后,我们提出使用集成学习技术,通过组合多个模型的预测来提高动作分类的整体准确性。在Stanford 40数据集上,我们的方法的最佳设置能够达到93.17%的准确率。
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