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Facial analysis in video: Detection and recognition.

机译:视频中的面部分析:检测和识别。

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摘要

Biometric authentication systems automatically identify or verify individuals using physiological (e.g., face, fingerprint, hand geometry, retina scan) or behavioral (e.g., speaking pattern, signature, keystroke dynamics) characteristics. Among these biometrics, facial patterns have the major advantage of being the least intrusive. Automatic face recognition systems thus have great potential in a wide spectrum of application areas. Focusing on facial analysis, this dissertation presents a face detection method and numerous feature extraction methods for face recognition.;Concerning face detection, a video-based frontal face detection method has been developed using motion analysis and color information to derive field of interests, and distribution-based distance (DBD) and support vector machine (SVM) for classification. When applied to 92 still images (containing 282 faces), this method achieves 98.2% face detection rate with two false detections, a performance comparable to the state-of-the-art face detection methods; when applied to video streams, this method detects faces reliably and efficiently.;Regarding face recognition, extensive assessments of face recognition performance in twelve color spaces have been performed, and a color feature extraction method defined by color component images across different color spaces is shown to help improve the baseline performance of the Face Recognition Grand Challenge (FRGC) problems. The experimental results show that some color configurations, such as YV in the YUV color space and YI in the YIQ color space, help improve face recognition performance. Based on these improved results, a novel feature extraction method implementing genetic algorithms (GAs) and the Fisher linear discriminant (FLD) is designed to derive the optimal discriminating features that lead to an effective image representation for face recognition. This method noticeably improves FRGC ver1.0 Experiment 4 baseline recognition rate from 37% to 73%, and significantly elevates FRGC ver2.0 Experiment 4 baseline verification rate from 12% to 69%. Finally, four two-dimensional (2D) convolution filters are derived for feature extraction, and a 2D+3D face recognition system implementing both 2D and 3D imaging modalities is designed to address the FRGC problems. This method improves FRGC ver2.0 Experiment 3 baseline performance from 54% to 72%.
机译:生物特征认证系统使用生理特征(例如,面部,指纹,手部几何形状,视网膜扫描)或行为特征(例如,说话模式,签名,击键动态)来自动识别或验证个人。在这些生物识别技术中,面部模式的主要优势是侵入性最小。因此,自动面部识别系统在广泛的应用领域中具有巨大的潜力。本文针对人脸分析提出了一种人脸检测方法和多种特征提取方法,用于人脸识别。关于人脸检测,已经开发出一种基于视频的正面人脸检测方法,利用运动分析和色彩信息来得出感兴趣的领域,并且基于分布的距离(DBD)和支持向量机(SVM)进行分类。当应用于92张静止图像(包含282张脸部)时,该方法通过两次错误检测实现了98.2%的脸部检测率,其性能可与最新的脸部检测方法相媲美;当应用于视频流时,该方法可以可靠,高效地检测人脸。关于人脸识别,已经对十二种颜色空间中的人脸识别性能进行了广泛的评估,并展示了由跨不同颜色空间的颜色分量图像定义的颜色特征提取方法以帮助改善人脸识别大挑战(FRGC)问题的基准性能。实验结果表明,某些颜色配置(例如YUV颜色空间中的YV和YIQ颜色空间中的YI)有助于改善人脸识别性能。基于这些改进的结果,设计了一种采用遗传算法(GAs)和Fisher线性判别式(FLD)的新颖特征提取方法,以得出导致有效图像表示的最佳人脸识别特征。该方法将FRGC ver1.0实验4基线验证率从37%显着提高,并将FRGC ver2.0实验4基线验证率从12%显着提高到69%。最后,导出四个二维(2D)卷积滤波器以进行特征提取,并设计了同时实现2D和3D成像模态的2D + 3D人脸识别系统以解决FRGC问题。此方法将FRGC ver2.0实验3的基准性能从54%提高到72%。

著录项

  • 作者

    Shih, Peichung.;

  • 作者单位

    New Jersey Institute of Technology.;

  • 授予单位 New Jersey Institute of Technology.;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2006
  • 页码 144 p.
  • 总页数 144
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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