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Wild facial expression recognition based on incremental active learning

机译:基于增量主动学习的野性表情识别

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Facial expression recognition in a wild situation is a challenging problem in computer vision research due to different circumstances, such as pose dissimilarity, age, lighting conditions, occlusions, etc. Numerous methods, such as point tracking, piecewise affine transformation, compact Euclidean space, modified local directional pattern, and dictionary-based component separation have been applied to solve this problem. In this paper, we have proposed a deep learning-based automatic wild facial expression recognition system where we have implemented an incremental active learning framework using the VGG16 model developed by the Visual Geometry Group. We have gathered a large amount of unlabeled facial expression data from Intelligent Technology Lab (ITLab) members at Inha University, Republic of Korea, to train our incremental active learning framework. We have collected these data under five different lighting conditions: good lighting, average lighting, close to the camera, far from the camera, and natural lighting and with seven facial expressions: happy, disgusted, sad, angry, surprised, fear, and neutral. Our facial recognition framework has been adapted from a multi-task cascaded convolutional network detector. Repeating the entire process helps obtain better performance. Our experimental results have demonstrated that incremental active learning improves the starting baseline accuracy from 63% to average 88% on ITLab dataset on wild environment. We also present extensive results on face expression benchmark such as Extended Cohn-Kanade Dataset, as well as ITLab face dataset captured in wild environment and obtained better performance than state-of-the-art approaches. (C) 2018 Published by Elsevier B.V.
机译:由于姿势不同,年龄,光照条件,遮挡等不同情况,野生环境下的面部表情识别在计算机视觉研究中是一个具有挑战性的问题。许多方法(例如点跟踪,分段仿射变换,紧凑的欧几里得空间,修改后的局部方向图和基于字典的组件分离已被应用来解决此问题。在本文中,我们提出了一种基于深度学习的自动野生面部表情识别系统,其中我们使用了Visual Geometry Group开发的VGG16模型实现了增量式主动学习框架。我们从大韩民国仁荷大学的智能技术实验室(ITLab)成员那里收集了许多未标记的面部表情数据,以训练我们的增量式主动学习框架。我们已经在五种不同的光照条件下收集了这些数据:良好的光照,平均光照,靠近相机,远离相机和自然光照,并具有七个面部表情:快乐,恶心,悲伤,愤怒,惊讶,恐惧和中立。我们的面部识别框架已从多任务级联卷积网络检测器改编而成。重复整个过程有助于获得更好的性能。我们的实验结果表明,在野生环境下,ITLab数据集上的主动学习可以将初始基线准确度从63%提高到平均88%。我们还在面部表情基准测试中提供了广泛的结果,例如扩展的Cohn-Kanade数据集,以及在野生环境中捕获的ITLab面部数据集,并获得了比最新方法更好的性能。 (C)2018由Elsevier B.V.发布

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