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Automatic Group Affect Analysis in Images via Visual Attribute and Feature Networks

机译:自动组通过Visual属性和特征网络影响图像中的分析

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This paper proposes a pipeline for automatic group-level affect analysis. A deep neural network-based approach, which leverages on the facial-expression information, scene information and a high-level facial visual attribute information is proposed. A capsule network-based architecture is used to predict the facial expression. Transfer learning is used on Inception-V3 to extract global image-based features which contain scene information. Another network is trained for inferring the facial attributes of the group members. Further, these attributes are pooled at a group-level to train a network for inferring the group-level affect. The facial attribute prediction network, although is simple yet, is effective and generates result comparable to the state-of-the-art methods. Later, model integration is performed from the three channels. The experiments show the effectiveness of the proposed techniques on three ‘in the wild’ databases: Group Affect Database, HAPPEI and UCLA-Protest database.
机译:本文提出了一种自动组级别影响分析的管道。提出了一种基于深度的神经网络的方法,其利用面部表达信息,场景信息和高级面部视觉属性信息。基于胶囊网络的架构用于预测面部表情。转移学习用于Inception-V3以提取包含场景信息的全局图像的特征。接受另一个网络,用于推断组成员的面部属性。此外,这些属性被池在组级别汇集以训练网络以推断组级别的影响。面部属性预测网络虽然很简单,但是有效的并且产生与最先进的方法相当的结果。稍后,从三个通道执行模型集成。实验表明了普遍的“数据库中的三个”中所提出的技术的有效性:组影响数据库,Happei和UCLA抗议数据库。

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