cs.AI updates on arXiv.org 07月29日 12:22
Color histogram equalization and fine-tuning to improve expression recognition of (partially occluded) faces on sign language datasets
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本研究旨在量化计算机视觉在识别手语数据集中面部表情的准确性,通过只使用面部上半部或下半部进行表情识别,探讨了听力受损者和正常人情感表现的差异,并通过色彩归一化方法提升了识别效果,结果表明正确识别面部表情的均值为83.8%,方差极小。

arXiv:2507.20197v1 Announce Type: cross Abstract: The goal of this investigation is to quantify to what extent computer vision methods can correctly classify facial expressions on a sign language dataset. We extend our experiments by recognizing expressions using only the upper or lower part of the face, which is needed to further investigate the difference in emotion manifestation between hearing and deaf subjects. To take into account the peculiar color profile of a dataset, our method introduces a color normalization stage based on histogram equalization and fine-tuning. The results show the ability to correctly recognize facial expressions with 83.8% mean sensitivity and very little variance (.042) among classes. Like for humans, recognition of expressions from the lower half of the face (79.6%) is higher than that from the upper half (77.9%). Noticeably, the classification accuracy from the upper half of the face is higher than human level.

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计算机视觉 面部表情识别 手语数据集 色彩归一化 表情识别准确性
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