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Image features and learning algorithms for biological, generic and social object recognition.

机译:用于生物,通用和社交对象识别的图像功能和学习算法。

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摘要

Automated recognition of object categories in images is a critical step for many real-world computer vision applications. Interest region detectors and region descriptors have been widely employed to tackle the variability of objects in pose, scale, lighting, texture, color, and so on. Different types of object recognition problems usually require different image features and corresponding learning algorithms. This dissertation focuses on the design, evaluation and application of new image features and learning algorithms for the recognition of biological, generic and social objects. The first part of the dissertation introduces a new structure-based interest region detector called the principal curvature-based region detector (PCBR) which detects stable watershed regions that are robust to local intensity perturbations. This detector is specifically designed for region detection for biological objects. Several recognition architectures are then developed that fuse visual information from disparate types of image features for the categorization of complex objects. The described image features and learning algorithms achieve excellent performance on the difficult stonefly larvae dataset. The second part of the dissertation presents studies of methods for visual codebook learning and their application to object recognition. The dissertation first introduces the methodology and application of generative visual codebooks for stonefly recognition and introduces a discriminative evaluation methodology based on a maximum mutual information criterion. Then a new generative/discriminative visual codebook learning algorithm, called iterative discriminative clustering (IDC), is presented that refines the centers and the shapes of the generative codewords for improved discriminative power. It is followed by a novel codebook learning algorithm that builds multiple codebooks that are non-redundant in discriminative power. All these visual codebook learning algorithms achieve high performance on both biological and generic object recognition tasks. The final part of the dissertation describes a socially-driven clothes recognition system for an intelligent fitting-room system. The dissertation presents the results of a user study to identify the key factors for clothes recognition. It then describes learning algorithms for recognizing these key factors from clothes images using various image features. The clothes recognition system successfully enables automated social fashion information retrieval for an enhanced clothes shopping experience.
机译:对于许多现实世界中的计算机视觉应用程序而言,自动识别图像中的对象类别是至关重要的一步。兴趣区域检测器和区域描述符已被广泛用于解决对象在姿势,比例,照明,纹理,颜色等方面的可变性。不同类型的对象识别问题通常需要不同的图像特征和相应的学习算法。本文主要研究图像的新特征和学习算法的设计,评估和应用,以识别生物,通用和社会物体。论文的第一部分介绍了一种新的基于结构的感兴趣区域检测器,称为基于主曲率的区域检测器(PCBR),该检测器可检测对局部强度扰动具有鲁棒性的稳定分水岭区域。该探测器专门设计用于生物物体的区域探测。然后开发了几种识别体系结构,这些体系结构融合了来自不同类型图像特征的视觉信息,以对复杂对象进行分类。所描述的图像特征和学习算法在困难的石蝇幼虫数据集上实现了出色的性能。论文的第二部分介绍了视觉码本学习方法的研究及其在目标识别中的应用。本文首先介绍了生成视觉码本在石蝇识别中的应用方法和应用,并介绍了一种基于最大互信息准则的判别性评价方法。然后,提出了一种称为迭代判别聚类(IDC)的新的生成/判别式视觉码本学习算法,该算法精炼了生成码字的中心和形状,以提高判别能力。其后是一种新颖的密码本学习算法,该算法可构建在区分能力上不冗余的多个密码本。所有这些视觉码本学习算法在生物学和通用对象识别任务上均实现了高性能。论文的最后部分描述了一种用于智能试衣间系统的社交驱动衣服识别系统。本文提出了一项用户研究的结果,以确定服装识别的关键因素。然后,它描述了使用各种图像特征从衣服图像中识别这些关键因素的学习算法。衣服识别系统成功地实现了自动社交时尚信息的检索,从而增强了衣服的购物体验。

著录项

  • 作者

    Zhang, Wei.;

  • 作者单位

    Oregon State University.;

  • 授予单位 Oregon State University.;
  • 学科 Engineering Electronics and Electrical.;Computer Science.;Artificial Intelligence.
  • 学位 Ph.D.
  • 年度 2009
  • 页码 137 p.
  • 总页数 137
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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