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Spontaneous Expression Recognition Based on Visual Attention Mechanism and Co-salient Features

机译:自发表达式识别基于视觉注意机制和共同突出特征

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Spontaneous facial expression recognition has gained much attention from researchers in recent years, however most of the existing algorithms still encounter bottlenecks in performance due to too big redundant images data in the video. In this paper, we propose a novel co-salient facial feature extraction algorithm, combined with human visual attention mechanism and group data coprocessing technology, which would largely reduce the redundant information in the original images and effectively improve the recognizing accuracy of facial expressions. Firstly, based on human visual mechanism, key frames of expression are dynamically derived from the original videos to capture the temporal dynamics of facial expressions. Secondly, using key sequence frames, salient regions are obtained by multiplicative fusion algorithm and in multi-images co-operative manner. Thirdly, we get rid of these salient regions due to their little deformation and low-correlation to facial expressions, and reduce the number of facial features data. At last, we extract Local Binary Pattern (LBP) features from the remainder of facial features and use Support Vector Machine (SVM) classifier to classify them respectively. Experimental results on dataset Cohn-Kanade plus and MMI showed that our proposed method can effectively improve the recognizing accuracy of spontaneous expression sequence.
机译:然而,自发面部表情识别已经深入人心,从研究人员的关注,近年来,现有的算法大多还是会遇到性能瓶颈由于视频太大冗余图像数据。在本文中,我们提出了一个新颖的共面突出的特征提取算法,符合人的视觉注意机制和组数据的协处理技术相结合,这将在很大程度上降低原始图像中的冗余信息,并有效改善面部表情的识别精度。首先,根据人的视觉机制,表达的关键帧被动态地从原始视频衍生捕捉的面部表情的时间动态。其次,使用密钥序列的帧,显着区域是由乘法融合算法和在多图像合作的方式得到。第三,我们摆脱这些显着的区域由于其变形小,低相关性的面部表情,并减少面部特征数据的数量。最后,我们提取局部二元模式(LBP)从五官其余功能和使用支持向量机(SVM)分类器将它们分别归类。在数据集科恩 - 奏加和MMI实验结果表明,我们提出的方法可以有效的改善自发表达序列的识别精度。

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