快速和鲁棒的自我训练胡子/小胡子检测和分割

T. Le, Khoa Luu, M. Savvides
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引用次数: 6

摘要

面部毛发的检测与分割在法医面部分析中起着重要的作用。在本文中,我们提出了一种快速、鲁棒、全自动和自我训练的胡须检测和分割系统。为了克服光照、面部毛发颜色和近乎清晰剃须的限制,我们的面部毛发检测自学习了一个变换向量,从测试图像本身分离毛发类和非毛发类。本文提出了一种由不同方向和频率的Gabor直方图(HoG)和Gabor梯度直方图(HOGG)组成的特征向量,用于胡须检测和分割。然后提出了一种基于特征的分割方法,从面部发现含有面部毛发的区域中分割出胡须。实验结果证明了我们提出的系统在检测和分割面部毛发方面的鲁棒性和有效性,这些图像来自三个完整的数据库,即多重生物识别大挑战(MBGC)仍然人脸数据库,NIST彩色面部识别技术FERET数据库和来自皮内拉斯县数据库的一个大子集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast and robust self-training beard/moustache detection and segmentation
Facial hair detection and segmentation play an important role in forensic facial analysis. In this paper, we propose a fast, robust, fully automatic and self-training system for beard/moustache detection and segmentation in challenging facial images. In order to overcome the limitations of illumination, facial hair color and near-clear shaving, our facial hair detection self-learns a transformation vector to separate a hair class and a non-hair class from the testing image itself. A feature vector, consisting of Histogram of Gabor (HoG) and Histogram of Oriented Gradient of Gabor (HOGG) at different directions and frequencies, is proposed for both beard/moustache detection and segmentation in this paper. A feature-based segmentation is then proposed to segment the beard/moustache from a region on the face that is discovered to contain facial hair. Experimental results have demonstrated the robustness and effectiveness of our proposed system in detecting and segmenting facial hair in images drawn from three entire databases i.e. the Multiple Biometric Grand Challenge (MBGC) still face database, the NIST color Facial Recognition Technology FERET database and a large subset from Pinellas County database.
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