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From Facial Expression Recognition to Interpersonal Relation Prediction

机译:从面部表情识别到人际关系的预测

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Abstract Interpersonal relation defines the association, e.g., warm, friendliness, and dominance, between two or more people. We investigate if such fine-grained and high-level relation traits can be characterized and quantified from face images in the wild. We address this challenging problem by first studying a deep network architecture for robust recognition of facial expressions. Unlike existing models that typically learn from facial expression labels alone, we devise an effective multitask network that is capable of learning from rich auxiliary attributes such as gender, age, and head pose, beyond just facial expression data. While conventional supervised training requires datasets with complete labels (e.g., all samples must be labeled with gender, age, and expression), we show that this requirement can be relaxed via a novel attribute propagation method. The approach further allows us to leverage the inherent correspondences between heterogeneous attribute sources despite the disparate distributions of different datasets. With the network we demonstrate state-of-the-art results on existing facial expression recognition benchmarks. To predict inter-personal relation, we use the expression recognition network as branches for a Siamese model. Extensive experiments show that our model is capable of mining mutual context of faces for accurate fine-grained interpersonal prediction.
机译:摘要的人际交往关系定义了两个或更多人之间的协会,例如温暖,友好和支配地位。我们调查是否可以从野外的面部图像表征和量化这种细粒度和高级关系性状。通过首先研究深入的网络架构,从而实现对面部表情的强大识别的深度网络架构来解决这一具有挑战性的问题。与通常仅从面部表达标签中学习的现有模型不同,我们设计了一种有效的多任务网络,该网络能够从丰富的辅助属性(例如性别,年龄和头部姿势)中学习,仅仅是面部表情数据。虽然传统的监督培训需要具有完整标签的数据集(例如,所有样本必须用性别,年龄和表达标记),但我们表明可以通过新颖的属性传播方法放宽这一要求。尽管不同数据集的不同分布,但是该方法进一步允许我们利用异构属性来源之间的固有对应关系。通过网络,我们展示了现有的面部表情识别基准的最先进结果。为了预测个人关系,我们将表达式识别网络作为暹罗模型的分支。广泛的实验表明,我们的模型能够为准确的细粒度的人际预测进行各种面孔的互相保护。

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