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Investigation on advanced image search techniques.

机译:研究高级图像搜索技术。

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摘要

Content-based image search for retrieval of images based on the similarity in their visual contents, such as color, texture, and shape, to a query image is an active research area due to its broad applications. Color, for example, provides powerful information for image search and classification. This dissertation investigates advanced image search techniques and presents new color descriptors for image search and classification and robust image enhancement and segmentation methods for iris recognition.;First, several new color descriptors have been developed for color image search. Specifically, a new oRGB-SIFT descriptor, which integrates the oRGB color space and the Scale-Invariant Feature Transform (SIFT), is proposed for image search and classification. The oRGB-SIFT descriptor is further integrated with other color SIFT features to produce the novel Color SIFT Fusion (CSF), the Color Grayscale SIFT Fusion (CGSF), and the CGSF+PHOG descriptors for image category search with applications to biometrics. Image classification is implemented using a novel EFM-KNN classifier, which combines the Enhanced Fisher Model (EFM) and the K Nearest Neighbor (KNN) decision rule. Experimental results on four large scale, grand challenge datasets have shown that the proposed oRGB-SIFT descriptor improves recognition performance upon other color SIFT descriptors, and the CSF, the CGSF, and the CGSF+PHOG descriptors perform better than the other color SIFT descriptors. The fusion of both Color SIFT descriptors (CSF) and Color Grayscale SIFT descriptor (CGSF) shows significant improvement in the classification performance, which indicates that various color-SIFT descriptors and grayscale-SIFT descriptor are not redundant for image search.;Second, four novel color Local Binary Pattern (LBP) descriptors are presented for scene image and image texture classification. Specifically, the oRGB-LBP descriptor is derived in the oRGB color space. The other three color LBP descriptors, namely, the Color LBP Fusion (CLF), the Color Grayscale LBP Fusion (CGLF), and the CGLF+PHOG descriptors, are obtained by integrating the oRGB-LBP descriptor with some additional image features. Experimental results on three large scale, grand challenge datasets have shown that the proposed descriptors can improve scene image and image texture classification performance.;Finally, a new iris recognition method based on a robust iris segmentation approach is presented for improving iris recognition performance. The proposed robust iris segmentation approach applies power-law transformations for more accurate detection of the pupil region, which significantly reduces the candidate limbic boundary search space for increasing detection accuracy and efficiency. As the limbic circle, which has a center within a close range of the pupil center, is selectively detected, the eyelid detection approach leads to improved iris recognition performance. Experiments using the Iris Challenge Evaluation (ICE) database show the effectiveness of the proposed method.
机译:基于内容的图像搜索用于基于图像的视觉内容(例如颜色,纹理和形状)与查询图像的相似性来检索图像,这是由于它的广泛应用而引起的研究领域。例如,颜色为图像搜索和分类提供了有力的信息。本文研究了先进的图像搜索技术,提出了用于图像搜索和分类的新颜色描述符以及用于虹膜识别的鲁棒图像增强和分割方法。具体而言,提出了一种新的oRGB-SIFT描述符,该描述符将oRGB颜色空间和尺度不变特征变换(SIFT)集成在一起,用于图像搜索和分类。 oRGB-SIFT描述符还与其他颜色SIFT功能集成在一起,以生成新颖的颜色SIFT融合(CSF),颜色灰度SIFT融合(CGSF)和CGSF + PHOG描述符,用于图像分类搜索以及生物识别应用。使用新颖的EFM-KNN分类器实现图像分类,该分类器结合了增强型Fisher模型(EFM)和K最近邻(KNN)决策规则。在四个大规模的大型挑战数据集上的实验结果表明,提出的oRGB-SIFT描述符可提高其他颜色SIFT描述符的识别性能,并且CSF,CGSF和CGSF + PHOG描述符的性能要优于其他颜色SIFT描述符。 Color SIFT描述符(CSF)和Color Grayscale SIFT描述符(CGSF)的融合显示了分类性能的显着提高,这表明各种color-SIFT描述符和灰度SIFT描述符在图像搜索中并不是多余的。提出了新颖的彩色局部二值模式(LBP)描述符,用于场景图像和图像纹理分类。具体来说,oRGB-LBP描述符是在oRGB颜色空间中派生的。其他三个颜色LBP描述符,即颜色LBP融合(CLF),颜色灰度LBP融合(CGLF)和CGLF + PHOG描述符,是通过将oRGB-LBP描述符与一些其他图像特征集成在一起而获得的。在三个大型挑战数据集上的实验结果表明,所提出的描述符可以改善场景图像和图像纹理的分类性能。最后,提出了一种基于鲁棒虹膜分割方法的虹膜识别新方法,以提高虹膜识别性能。提出的鲁棒虹膜分割方法采用幂律变换来更准确地检测瞳孔区域,从而显着减少了候选边缘边界搜索空间,从而提高了检测精度和效率。由于有选择地检测了具有在瞳孔中心的近距离内的中心的角膜缘圆,因此眼睑检测方法导致虹膜识别性能提高。使用虹膜挑战评估(ICE)数据库进行的实验证明了该方法的有效性。

著录项

  • 作者

    Verma, Abhishek.;

  • 作者单位

    New Jersey Institute of Technology.;

  • 授予单位 New Jersey Institute of Technology.;
  • 学科 Computer Science.;Artificial Intelligence.;Engineering Computer.
  • 学位 Ph.D.
  • 年度 2011
  • 页码 131 p.
  • 总页数 131
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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