基于皮肤分割和边缘检测的混合人脸检测

Y. C. See, N. Noor, A. Lai
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引用次数: 7

摘要

低质量图像和不同位置的人脸检测是一项非常具有挑战性的任务。针对这些问题,本文提出了一种混合人脸检测方法。该算法首先对图像进行大小调整,然后利用高斯混合模型计算图像中像素的皮肤似然值。然后,根据图像信息自适应地获得合适的阈值,从背景中提取皮肤区域;本研究开发了一种人脸定位和检测算法。这项研究使用了卢布尔雅那大学(斯洛文尼亚)计算机视觉实验室(CVL)的人脸数据库,该数据库包含114个不同个体的7张2D图像,以评估所提出的系统。图像分辨率为640*480像素。另一个数据库是Bao数据库,它由157张图像组成,图像分辨率在57×85像素和300 × 300像素之间。CVL数据库对正面和侧面图像的检测准确率分别为94.4%和84.7%。在Bao数据库上的检测准确率为93.6%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid face detection with skin segmentation and edge detection
Face detection for low quality images and different face positions is a very challenging task. This paper presents a hybrid method for face detection to these problems. The algorithm starts with image resizing process followed by the Gaussian Mixture Model to calculate the skin likelihood value of pixel in an image. Then, the skin regions are extracted from the background with a proper threshold value obtained adaptively based on image information. This study developed an algorithm to performed face location and detection. This study used face database from University of Ljubljana (Slovenia) Computer Vision Laboratory (CVL), which contains seven 2D images corresponding to 114 different individuals, to evaluate the proposed system. The resolution of the images is 640*480 pixels. Another database, the Bao database which consists of 157 images with image resolutions within 57×85 pixels and 300 × 300 pixels is chosen. The detection accuracy for frontal face and side face images on CVL database is 94.4% and 84.7% respectively. The detection accuracy on Bao database is 93.6%.
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