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Local Dominant Directional Symmetrical Coding Patterns for Facial Expression Recognition

机译:面部表情识别的局部主导定向对称编码模式

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To overcome the shortcomings of inaccurate textural direction representation and high-computational complexity of Local Binary Patterns (LBPs), we propose a novel feature descriptor named as Local Dominant Directional Symmetrical Coding Patterns (LDDSCPs). Inspired by the directional sensitivity of human visual system, we partition eight convolution masks into two symmetrical groups according to their directions and adopt these two groups to compute the convolution values of each pixel. Then, we encode the dominant direction information of facial expression texture by comparing each pixel’s convolution values with the average strength of its belonging group and obtain LDDSCP-1 and LDDSCP-2 codes, respectively. At last, in view of the symmetry of two groups of direction masks, we stack these corresponding histograms of LDDSCP-1 and LDDSCP-2 codes into the ultimate LDDSCP feature vector which has effects on the more precise facial feature description and the lower computational complexity. Experimental results on the JAFFE and Cohn-Kanade databases demonstrate that the proposed LDDSCP feature descriptor compared with LBP, Gabor, and other traditional operators achieves superior performance in recognition rate and computational complexity. Furthermore, it is also no less inferior to some state-of-the-art local descriptors like as LDP, LDNP, es-LBP, and GDP.
机译:为了克服局部二进制模式(LBPS)的不准确的纹理方向表示和高计算复杂性的缺点,我们提出了一个名为局部主导定向对称编码模式(LDDSCP)的新颖特征描述符。灵感来自人类视觉系统的定向敏感性,我们根据其方向将八个卷积掩模分配成两个对称组,并采用这两组来计算每个像素的卷积值。然后,我们通过将每个像素的卷积值与其归属组的平均强度进行比较并获得LDDSCP-1和LDDSCP-2代码来编码面部表情纹理的主导方向信息。最后,鉴于两组方向掩模的对称性,我们将LDDSCP-1和LDDSCP-2的相应直方图堆叠到最终的LDDSCP特征向量中,这对更精确的面部特征描述和较低的计算复杂性具有效果。 Jaffe和Cohn-Kanade数据库上的实验结果表明,与LBP,Gabor和其他传统运营商相比,所提出的LDDSCP特征描述符在识别率和计算复杂性方面实现了卓越的性能。此外,它也不低于某种最先进的本地描述符,如LDP,LDNP,ES-LBP和GDP。

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