Multi-face Detection System in Video Sequence

Phuong-Trinh Pham-Ngoc, K. Jo
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引用次数: 11

Abstract

This paper presents an improved system for detecting multiple faces in a video sequence where detection is not limited to frontal view. We propose an adaptive selection of skin models from two different ones in RGB and ratio rgb space to overcome the illumination problem caused by automatic focus of camera. With the proposed solution, we receive more reasonable skin detection for different human races. We modify local binary pattern (LBP) by adding a set of spatial templates. This LBP considers both principal local shapes and spatial textures of facial components. Human face is represented by a histogram of LBP coefficients. Moreover, the grayscale image of human face is changed to discrete cosine transform (DCT) coefficients used in embedded hidden Markov models (eHMMs). A modified LBP (mLBP) histogram matching and eHMMs are composed to hierarchical classifier to determine whether skin regions are faces or not. The results of our system on different cameras are presented and discussed. We compare the performance capability of our system with other systems using separately eHMMs or LBP histogram matching. The proposed system can work well to detect attitudes of faces like frontal, rotated and profile faces.
视频序列中的多人脸检测系统
本文提出了一种改进的系统,用于检测视频序列中的多个人脸,其中检测不限于正面视图。为了克服相机自动对焦带来的光照问题,提出了一种从RGB空间和比例RGB空间两种不同的皮肤模型中自适应选择皮肤模型的方法。通过提出的解决方案,我们得到了更合理的不同人种的皮肤检测。我们通过添加一组空间模板来修改局部二进制模式(LBP)。该LBP考虑了面部成分的主要局部形状和空间纹理。人脸由LBP系数的直方图表示。此外,将人脸灰度图像转化为离散余弦变换(DCT)系数,用于嵌入式隐马尔可夫模型(ehmm)。将改进的LBP (mLBP)直方图匹配和ehmm组合成层次分类器来确定皮肤区域是否为人脸。给出了系统在不同摄像机上的测试结果并进行了讨论。我们使用单独的ehmm或LBP直方图匹配将我们的系统的性能与其他系统进行比较。该系统可以很好地检测正面脸、旋转脸和侧面脸的姿态。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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