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Feature Engineering in Fine-Grained Image Classification.

机译:细粒度图像分类中的特征工程。

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摘要

In most machine learning pipelines, feature engineering is an important module. The use of features has become the bottleneck for many learning related tasks, especially fo unstructured data like images and texts. This thesis researched on the use of features from several aspects, including feature design, feature selection, and feature learning, on a family of tasks called fine-grained image classification. Fine-grained classification refers to tasks in which the class differences are very subtle to observe, for example, to recognize sub-ordinate level classes like certain animal species, or to identify similar 3D shapes in medical images.;In particular, this thesis covers several different projects. The use of feature selection algorithm is first explored in analysing similar 3D shapes for a medical problem called craniosynostosis. Different sparse logistic regression models are investigated, and a new sparse logistic regression model called clustering lasso is proposed specifically for this problem. Next, on a specific fine-grained recognition problem -- fast food recognition, an image representation called pairwise feature distribution (PFD) is proposed, which is focused on capturing the spatial information inside food images, using geometric pairwise features. The use of feature learning approaches is then explored on the general fine-grained object recognition problem, and a template model is proposed to improve the state-of-the-art object recognition framework by learning of mid-level feature representations for fine-grained tasks. The effectiveness of these algorithms proposed in this thesis is shown by comparison with the state-of-the-art algorithms on several publicly available benchmark datasets.
机译:在大多数机器学习管道中,特征工程是重要的模块。功能的使用已成为许多与学习相关的任务的瓶颈,尤其是对于诸如图像和文本之类的非结构化数据。本文从一系列功能(包括细化图像分类,特征选择,特征学习)的角度研究了特征的使用。细粒度分类是指类别差异非常难以观察的任务,例如,识别某些动物物种等下属级别的类别,或在医学图像中识别相似的3D形状。几个不同的项目。首先在分析类似3D形状的医学问题中探索了特征选择算法的使用,该医学问题被称为颅骨前突。研究了不同的稀疏逻辑回归模型,并针对此问题提出了一种新的稀疏逻辑回归模型,称为聚类套索。接下来,针对特定的细粒度识别问题-快餐识别,提出了一种称为成对特征分布(PFD)的图像表示,该图像表示的重点是利用几何成对特征捕获食物图像内部的空间信息。然后,针对一般的细粒度对象识别问题探索了特征学习方法的使用,并提出了一种模板模型,通过学习用于细粒度的中级特征表示来改进最新的对象识别框架。任务。通过与几种公共基准数据集上的最新算法进行比较,证明了本文提出的这些算法的有效性。

著录项

  • 作者

    Yang, Shulin.;

  • 作者单位

    University of Washington.;

  • 授予单位 University of Washington.;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2013
  • 页码 96 p.
  • 总页数 96
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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