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Enhancing Feature Correlation for Bi-Modal Group Emotion Recognition

机译:增强特征相关性的双模态群体情感识别

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Group emotion recognition in the wild has received much attention in computer vision community. It is a very challenge issue, due to interactions taking place between various numbers of people, different occlusions. According to human cognitive and behavioral researches, background and facial expression play a dominating role in the perception of group's mood. Hence, in this paper, we propose a novel approach that combined these two features for image-based group emotion recognition with feature correlation enhancement. The feature enhancement is mainly reflected in two parts. For facial expression feature extraction, we plug non-local blocks into Xception network to enhance the feature correlation of different positions in low-level, which can avoid the fast loss of position information of the traditional CNNs and effectively enhance the network's feature representation capability. For global scene information, we build a bilinear convolutional neural network (B-CNN) consisting of VGG16 networks to model local pairwise feature interactions in a transla-tionally invariant manner. The experimental results show that the fused feature could effectively improve the performance.
机译:野外群体情感识别在计算机视觉界受到了广泛的关注。这是一个非常具有挑战性的问题,因为不同数量的人,不同的遮挡物之间发生了交互。根据人类的认知和行为研究,背景和面部表情在人们对小组情绪的感知中起着主导作用。因此,在本文中,我们提出了一种新颖的方法,将这两个特征结合在一起用于基于图像的群体情感识别和特征相关性增强。功能增强主要体现在两个部分。为了进行面部表情特征提取,我们将非局部块插入Xception网络中,以增强底层不同位置的特征相关性,从而避免了传统CNN位置信息的快速丢失,有效地增强了网络的特征表示能力。对于全局场景信息,我们构建了由VGG16网络组成的双线性卷积神经网络(B-CNN),以翻译不变的方式对局部成对特征交互进行建模。实验结果表明,融合特征可以有效地提高性能。

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