标题: 基于主动外观模型演算法之人脸方向估测
An Active Appearance Model Algorithm for Face Pose Estimation
作者: 江佳蓉
Chiang, Chia-Rong
吴炳飞
Wu, Bing-Fei
电控工程研究所
关键字: 主动外观模型演算法;AAM
公开日期: 2012
摘要: 本论文为开发更符合人性化的人机互动介面,不同于其他系统需要装载繁复的感应器于头顶上,本系统利用常见的网路摄影机(Webcam)并搭配具备影像辨识及侦测技术之人脸辨识系统,架设于头部正前方即可自动侦测并判断使用者头部方向做为操控机器人转向之依据,让使用者拥有更直觉及便利的人机互动经验。
本系统流程主要分为三个部分:侦测、追踪以及辨识。侦测的部分,侦测出人脸的大约位置,加上人脸追踪演算法,使得系统更为即时及稳定。人脸辨识方法上使用主动外观模型演算法(Active Appearance Model),此演算法包含了人脸最重要的资讯:形状及纹理,结合这两个资讯可辨识出不同人脸方向,再依此控制轮椅的转向,达到简易直觉性操作的目的。本论文在主动外观模型(AAM)匹配的成功率到达95.625%,此外总共测试了82574张影像,包含不同场景与光线,而人脸方向估测则有95.345%以上的正确率。本论文最重要部分是将人脸转向的功能整合至机器人上,并且能流畅的执行,达成不同应用的结果。
In this thesis, unlike most of the control systems use lots of complicated equipments and sensors to achieve the goal of face pose estimation, our system, just uses a USB webcam as our tool to fulfill the demand of user-friendly interfaces. Furthermore, our system, which makes good use of automatic face detection and face-poses recognition, provides an effortless and comfortable human machine interface for all users.
This system could be mainly separated into three parts: detection, tracking, and recognition. In detection, face positions are approximately found by detection algorithm. Moreover, the tracking algorithm which not only ought to maintain a stable situation but also reduce the search range. In recognition, the AAM (Active Appearance Model) is applied. AAM contains two essential information, shape and texture, which can distinguish face poses into three directions. The final results would control the wheelchair-Robot toward different directions. The experimental results demonstrate that the proposed approach performs a successful AAM fitting ratio of 95.625%. Furthermore, correct face-pose estimation ratio of 95.345% with testing total 82574 images under different lighting conditions and backgrounds. The contribution of this thesis is that we successfully integrate the face pose estimation with wheelchair robot, and also accomplish different applications.
URI: http://140.113.39.130/cdrfb3/record/nctu/#GT079912508
http://hdl.handle.net/11536/49212
显示于类别:Thesis