一种改进的监督下降法人脸对齐算法

Qiaosong Chen, Wen Li, Xiaomin Meng, Lexin Li, Ling Zheng, Jin Wang, Xin Deng
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引用次数: 0

摘要

针对监督下降法(SDM)存在的人脸特征提取不准确、局部最优导致最终对齐效果不佳等问题,提出了一种改进的基于监督下降法(ISDM)的人脸对齐算法。首先,提出了一种改进的基于多层的多尺度梯度直方图(IMHOG)特征提取方法,该方法能够表达更精细的人脸特征,使人脸更容易被识别;同时,采用社会蜘蛛优化(SSO)对估计形状进行全局迭代优化,避免了局部最优,使估计形状更接近实际形状,从而使最终的对齐效果更加精确。实验表明,该算法在LFPW、AFLW和300-W数据集上均能取得较好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Improved Supervised Descent Method based Face Alignment Algorithm
Aiming at existing problems about Supervised Descent Method (SDM), such as inaccurate facial feature extraction and the poor final alignment effect resulted by local optimum, an improved SDM (ISDM) based face align- ment algorithm is proposed. Firstly, an improved multi-scale Histograms of Gradient (IMHOG) feature extraction method based on multi-layers is raised, which expresses more refined facial features and makes faces be recognized more easily. Meanwhile, the social spider optimization (SSO) is applied to op- timize the estimated shape in iteration globally, which can avoid the local opti- mal. And it makes the estimated shape closer to the real shape so that the final alignment effect is more precise. Experiments have shown that the proposed al- gorithm can get better results than previous algorithms in LFPW, AFLW and 300-W datasets.
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