一种改进的图像人脸特征提取方法

R. Contreras, O. Starostenko, L.F. Pulido
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引用次数: 3

摘要

当有必要分析一个人的面部时,无论是为了识别病理、情绪还是精神状态,都有必要获得最大限度的面部特征信息,特别是反映这些方面的信息。这些特征主要是嘴、眼睛和眉毛。分析过程的开始,一旦人脸和待分析的面部特征被划分成几个部分,就包括对所述特征应用一种算法来检测其边缘。最常用的边缘算法有;苏珊、坎尼、索贝尔和罗伯茨等等。这些算法在边缘定义良好的情况下表现出色,但在彩色人脸的情况下,过渡没有明确标记,并且有许多缺陷和阴影时,上述算法在很多情况下会产生不完整的轮廓,导致高级分析错误。本文提出了一种基于Canny算法的新方法,该方法使我们能够获得比上述其他算法更多的信息的嘴的边缘,这使得它更适合最初规定的目标。该方法已经通过检测嘴的轮廓和面部图像数据库进行了测试,ldquoMMI面部表情数据库由M. Pantic & M. F. Valstar和A.M. Martinez and R. Benavente编译。AR人脸数据库。CVC技术报告#24,1998年6月”。
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An Improved Method for Facial Features Extraction in Images
When it is necessary to analyze a personpsilas face, whether it is for recognizing pathologies, emotions, or states of mind, it becomes necessary to obtain a maximum of information of the facial characteristics that especially reflect these aspects. These characteristics are principally, the mouth, eyes and eyebrows. The start of the analytic process, once the face and the facial feature to be analyzed have been divided into segments, consists in applying an algorithm to said feature for the detection of its edges. The most used edges algorithms are; SUSAN, Canny, Sobel, and Roberts, among others. These algorithms function excellently when the edges are fairly well defined, but in the case of faces in color, where the transitions are not clearly marked, and when there are many imperfections and shadings, the above mentioned algorithms generate incomplete contours in a great number of cases, leading to errors in high level analysis. This article presents a new methodology based on the Canny algorithm which allows us to obtain the edges of the mouth with much greater information than the other above mentioned algorithms, which makes it more adequate for the originally stated objective. The method has been tested detecting the outline contour of the mouth and using the databases of facial images, ldquoMMI facial expression database compiled by M. Pantic & M. F. Valstar" and "A.M. Martinez and R. Benavente. The AR face database. CVC technical report #24, June 1998".
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