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Smile Detection in the Wild Based on Transfer Learning

机译:基于迁移学习的野外微笑检测

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摘要

Smile detection from unconstrained facial images is a specialized and challenging problem. As one of the most informative expressions, smiles convey basic underlying emotions, such as happiness and satisfaction, and leads to multiple applications, such as human behavior analysis and interactive controlling. Compared to the size of databases for face recognition, far less labeled data is available for training smile detection systems. This paper proposes an efficient transfer learning-based smile detection approach to leverage the large amount of labeled data from face recognition datasets and to alleviate overfitting on smile detection. A well-trained deep face recognition model is explored and fine-tuned for smile detection in the wild, unlike previous works which use either hand-engineered features or train deep convolutional networks from scratch. Three different models are built as a result of fine-tuning the face recognition model with different inputs, including aligned, unaligned and grayscale images generated from the GENKI-4K dataset. Experiments show that the proposed approach achieves improved state-of-the-art performance. Robustness of the model to noise and blur artifacts is also evaluated in this paper.
机译:从不受约束的面部图像中进行微笑检测是一个特殊且具有挑战性的问题。作为最丰富的表达方式之一,微笑传达了基本的内在情感,例如幸福和满足感,并导致了多种应用,例如人类行为分析和交互式控制。与用于面部识别的数据库大小相比,用于训练微笑检测系统的标记数据少得多。本文提出了一种有效的基于转移学习的微笑检测方法,以利用来自面部识别数据集的大量标记数据并减轻微笑检测的过度拟合。探索和训练有素的深层脸部识别模型并进行微调,以便在野外进行微笑检测,这与以前的作品不同,这些作品要么使用手工设计的功能,要么从头开始训练深度卷积网络。通过使用不同的输入对人脸识别模型进行微调,可以构建三种不同的模型,包括从GENKI-4K数据集生成的对齐,未对齐和灰度图像。实验表明,所提出的方法可实现改进的最新性能。本文还评估了模型对噪声和模糊伪像的鲁棒性。

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