首页> 外文会议>International conference on digital image processing >Multi Skin Color Clustering Models for Face Detection
【24h】

Multi Skin Color Clustering Models for Face Detection

机译:用于面部检测的多肤色聚类模型

获取原文

摘要

Automatic face detection in colored images is closely related to face recognition systems, as a preliminary critical required step, where it is necessary to search for the precise face location. We propose a reliable approach for skin color segmentation to detect human face in colored images under unconstrained scene conditions that overcoming the sensitivity to the variation in face size, pose, location, lighting conditions, and complex background. Our approach is based on building multi skin color clustering models using HSV color space, multi-level segmentation, and rule-based classifier. We proposed to use four skin color clustering models instead of single skin clustering model, namely: standard-skin model, shadow-skin model, light-skin model, high-red-skin model. We made an independent skin color clustering models by converting 3-D color space to 2-D without losing color information in order to find the classification boundaries for each skin color pattern class in 2-D. Once we find the classification boundaries, we process the input image with the first-level skin-color segmentation to produce four layers; each layer reflecting its skin-color clustering model. Then an iterative rule-based region grow is performed to create one solid region of interest which is presumed to be a face candidate region that will be passed to the second-level segmentation. In this approach we combine pixel-based segmentation and region-based segmentation using the four skin layers. We also propose skin-color correction (skin lighting) at shadow-skin layer to improve detection rate.In the second-level segmentation we use gray scale to segment the face candidate region into the most significant features using thresholding. Next step is to compute the X-Y-reliefs to locate the accurate position of facial features in each face candidate region and match it with our geometrical knowledge in order to classify the face candidate region to a face or non-face region. We present experimental results of our implementation and demonstrate the feasibility of our approach to be general purpose skin color segmentation for face detection problem.
机译:彩色图像中的自动面部检测与面部识别系统密切相关,这是必需的初步关键步骤,在该步骤中,必须搜索精确的面部位置。我们提出了一种可靠的肤色分割方法,可以在不受限制的场景条件下检测彩色图像中的人脸,从而克服了对脸部大小,姿势,位置,光照条件和复杂背景变化的敏感性。我们的方法基于使用HSV颜色空间,多级细分和基于规则的分类器构建多肤色聚类模型。我们建议使用四个皮肤颜色聚类模型,而不是单一皮肤聚类模型:标准皮肤模型,阴影皮肤模型,浅皮肤模型,高红色皮肤模型。我们通过将3-D颜色空间转换为2-D而又不丢失颜色信息的方式来建立独立的肤色聚类模型,以便找到2-D中每种肤色图案类别的分类边界。找到分类边界后,我们将使用第一级肤色分割对输入图像进行处理,以生成四层图像。反映其肤色聚类模型的每一层。然后,执行基于规则的迭代区域增长,以创建一个感兴趣的实心区域,该区域被假定为将被传递到第二级分割的人脸候选区域。在这种方法中,我们使用四个皮肤层将基于像素的分割和基于区域的分割相结合。我们还建议在阴影皮肤层上进行皮肤颜色校正(皮肤照明),以提高检测率。 在第二级分割中,我们使用灰度级使用阈值将面部候选区域分割为最重要的特征。下一步是计算X-Y浮雕,以在每个面部候选区域中定位面部特征的准确位置,并将其与我们的几何知识进行匹配,以将面部候选区域分类为面部或非面部区域。我们介绍了实现的实验结果,并证明了将我们的方法用作用于面部检测问题的通用肤色分割的可行性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号