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Homogeneous and Heterogeneous Face Recognition: Enhancing, Encoding and Matching for Practical Applications.

机译:同质和异质人脸识别:实际应用中的增强,编码和匹配。

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摘要

Face Recognition is the automatic processing of face images with the purpose to recognize individuals. Recognition task becomes especially challenging in surveillance applications, where images are acquired from a long range in the presence of difficult environments. Short Wave Infrared (SWIR) is an emerging imaging modality that is able to produce clear long range images in difficult environments or during night time. Despite the benefits of the SWIR technology, matching SWIR images against a gallery of visible images presents a challenge, since the photometric properties of the images in the two spectral bands are highly distinct.;In this dissertation, we describe a cross spectral matching method that encodes magnitude and phase of multi-spectral face images filtered with a bank of Gabor filters. The magnitude of filtered images is encoded with Simplified Weber Local Descriptor (SWLD) and Local Binary Pattern (LBP) operators. The phase is encoded with Generalized Local Binary Pattern (GLBP) operator. Encoded multi-spectral images are mapped into a histogram representation and cross matched by applying symmetric Kullback-Leibler distance. Performance of the developed algorithm is demonstrated on TINDERS database that contains long range SWIR and color images acquired at a distance of 2, 50, and 106 meters.;Apart from long acquisition range, other variations and distortions such as pose variation, motion and out of focus blur, and uneven illumination may be observed in multispectral face images. Recognition performance of the face recognition matcher can be greatly affected by these distortions. It is important, therefore, to ensure that matching is performed on high quality images. Poor quality images have to be either enhanced or discarded. This dissertation addresses the problem of selecting good quality samples.;The last chapters of the dissertation suggest a number of modifications applied to the cross spectral matching algorithm for matching low resolution color images in near-real time. We show that the method that encodes the magnitude of Gabor filtered images with the SWLD operator guarantees high recognition rates. The modified method (Gabor-SWLD) is adopted in a camera network set up where cameras acquire several views of the same individual. The designed algorithm and software are fully automated and optimized to perform recognition in near-real time. We evaluate the recognition performance and the processing time of the method on a small dataset collected at WVU.
机译:人脸识别是自动处理人脸图像,目的是识别个人。在监视应用中,识别任务变得尤其具有挑战性,在监视应用中,在困难的环境中从远距离获取图像。短波红外(SWIR)是一种新兴的成像方式,能够在困难的环境中或夜间产生清晰的远距离图像。尽管有SWIR技术的好处,但是将SWIR图像与可见图像库匹配仍然是一个挑战,因为在两个光谱带中图像的光度特性非常不同。编码使用一堆Gabor滤波器过滤的多光谱人脸图像的幅度和相位。过滤后的图像的大小使用简化的Weber本地描述符(SWLD)和本地二进制模式(LBP)运算符进行编码。该阶段使用广义本地二进制模式(GLBP)运算符进行编码。编码的多光谱图像被映射为直方图表示形式,并通过应用对称的Kullback-Leibler距离进行交叉匹配。在TINDERS数据库上演示了开发算法的性能,该数据库包含在2、50和106米处获取的远距离SWIR和彩色图像;除远距离获取范围外,还存在其他变化和失真,例如姿势变化,运动和偏离聚焦模糊,并且在多光谱面部图像中可能会观察到不均匀的照明。这些失真会严重影响面部识别匹配器的识别性能。因此,重要的是要确保对高质量图像进行匹配。劣质图像必须被增强或丢弃。本论文解决了选择高质量样本的问题。论文的最后几章提出了对交叉光谱匹配算法的一些修改,以对低分辨率彩色图像进行近实时匹配。我们表明,使用SWLD运算符对Gabor滤波图像的大小进行编码的方法可确保较高的识别率。摄像机网络中采用了改进的方法(Gabor-SWLD),在该网络中,摄像机获取同一个人的多个视图。设计的算法和软件是完全自动化和优化的,可以近乎实时地进行识别。我们在WVU收集的一个小型数据集上评估该方法的识别性能和处理时间。

著录项

  • 作者

    Nicolo, Francesco.;

  • 作者单位

    West Virginia University.;

  • 授予单位 West Virginia University.;
  • 学科 Engineering Electronics and Electrical.;Computer Science.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 123 p.
  • 总页数 123
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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