基于SOBEL滤波的皱眉表情检测及其负面情绪识别

Shu-Chiang Chung, S. Barma, Ta-Wen Kuan, Ting-Wei Lin
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引用次数: 5

摘要

本文提出了一种基于面部皱纹和面部表情因子(FEF)的消极情绪状态检测方法来提高幸福感。FEF将皱眉和情绪状态联系起来。使用SOBEL滤波检测皱眉线,并从选择的皱眉线中计算FEF因子来了解实际情绪状态。因此,消极的情绪状态被发现,这有助于进一步促进幸福。这个实验有10个参与者。总共有40张图片(包括20张中性表情和20张皱眉表情)被考虑用于实验。结果表明,10名参与者中有8人的情绪状态被正确识别。进一步,通过调整阈值修正错误的识别结果。结果表明,该方法的识别准确率可达80%。所提出的工作基于简单的培训,有效地减少了培训时间成本。此外,该方法还可以使用FEF检测更复杂的面部表情(如强迫微笑)。阈值的调整使该方法更加有效。因此,这样的结果显示了其通过检测负面情绪状态来促进幸福感的有效性。
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Frowning expression detection based on SOBEL filter for negative emotion recognition
This paper proposes a novel method to improve happiness status by detection negative emotional status based on frowning lines on face and a new term called facial expression factor (FEF). The FEF correlates the frowning and with emotional status. The frowning lines are detected using SOBEL filter and FEF factors are calculated from selected frowning lines to know the actual emotional status. Thus the negative emotional state are detected which could help to promote the happiness further. The experiment is conducted on 10 participants. In total 40 images (including 20 neutral and 20 frowning expression) are considered for experiment. The results show that the emotional status of 8 persons out of 10 participants is recognized correctly. Further, the wrong recognition results are corrected by tuning the threshold. Hence, the results depict the recognition accuracy up to 80%. The proposed work is based on simple training which also reduces the training time cost effectively. Furthermore, the proposed method is able to detect more complex facial expression (e.g., forced smile) using FEF. The tuning of threshold makes the method more effective. Therefore, such results show its effectiveness by detecting negative emotional state to promote the happiness.
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