基于功率LBP算子的微笑与中性表情识别

K. Nurzynska, B. Smolka
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引用次数: 3

摘要

情绪的自动识别在很多情况下都是有帮助的。因此,研究提供最准确的识别工具是必要的。本文研究了微笑和中性表情的分类问题。在图像描述方面,利用了局部二值模式(LBP)和新型幂LBP (PLBP)纹理算子。在几个数据库上比较了它们的性能,并检查了标准设计的变化,例如均匀和旋转不变量方法。使用支持向量机(SVM)进行分类。结果表明,在应用以多个小图像块单独分析为特征的精细图像分割模式时,所引入的PLBP算法优于LBP算法。此外,均匀或旋转不变的LBP版本并不能改善分类。然而,使用不同类型的PLBP所获得的精度比使用标准LBP技术时更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recognition between smiling and neutral facial display with power LBP operator
Automatic recognition of emotions can be helpful in many situations. Therefore, research towards providing tools enabling the most accurate recognition is necessary. In this work, the problem of smiling and neutral facial display classification is addressed. For image description, the local binary patterns (LBP) as well as the novel power LBP (PLBP) texture operators are exploited. Their performance is compared on several databases and examined for variations from the standard designs, such as uniform and rotation invariant approaches. The classification is performed with the use of support vector machine, SVM. The obtained results show that when applying detailed image division schema, which is characterised by many small image patches analyzed separately, the introduced PLBP overcomes the LBP method. Moreover, the uniform or rotation invariant LBP versions do not improve the classification. However, the accuracy achieved using different types of PLBP is higher than when applying the standard LBP technique.
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