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Optimum Pipeline for Visual Terrain Classification Using Improved Bag of Visual Words and Fusion Methods

机译:使用改进的视觉单词和融合方法的可视地形分类的最佳管道

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摘要

We propose an optimum pipeline and develop the hybrid representation to produce an effective and efficient visual terrain classification system. The bag of visual words (BOVW) framework has emerged as a promising approach and effective paradigm for visual terrain classification. The method includes four main steps: (1) feature extraction, (2) codebook generation, (3) feature coding, and (4) pooling and normalization. Recent researches have primarily focused on feature extraction in the development of new handcrafted descriptors that are specific to the visual terrain. However, the effects of other steps on visual terrain classification are still unknown. At the same time, fusion methods are often used to boost classification performance by exploring the complementarity of diverse features. We provide a comprehensive study of all steps in the BOVW framework and different fusion methods for visual terrain classification. Then, multiple approaches in each step and their effects are explored on the visual terrain dataset. Finally, the feature preprocessing technique, improved BOVW framework, and fusion method are used to construct an optimum pipeline for visual terrain classification. The hybrid representation developed by the optimum pipeline performs effectively and rapidly for visual terrain classification in the terrain dataset, outperforming those current methods. Furthermore, it is robust to diverse noises and illumination alterations.
机译:我们提出了一个最佳的管道,并制定混合表示,以产生有效且有效的视觉地形分类系统。视觉单词(BOVW)框架的袋已成为一种有希望的方法和有效的视觉地形分类的范式。该方法包括四个主步骤:(1)特征提取,(2)码本生成,(3)特征编码,(4)池和归一化。最近的研究主要专注于开发特定于视觉地形的新手工描述符的特征提取。然而,其他步骤对视觉地形分类的影响仍然是未知的。同时,融合方法通常用于通过探索各种功能的互补性来提高分类性能。我们对鲍瓦夫框架和不同融合方法进行了全面研究,可视地形分类。然后,在视觉地形数据集中探讨了每个步骤中的多种方法及其效果。最后,采用特征预处理技术,改进的BOVW框架和融合方法来构造用于视觉地形分类的最佳流水线。由最佳管道开发的混合表示有效且快速地在地形数据集中的视觉地形分类进行,优于这些当前方法。此外,它对不同的噪声和照明改变是强大的。

著录项

  • 来源
    《Journal of Sensors》 |2017年第1期|共25页
  • 作者单位

    Acad Mil Med Sci Inst Med Equipment Tianjin 300161 Peoples R China;

    Acad Mil Med Sci Inst Med Equipment Tianjin 300161 Peoples R China;

    Acad Mil Med Sci Inst Med Equipment Tianjin 300161 Peoples R China;

    Acad Mil Med Sci Inst Med Equipment Tianjin 300161 Peoples R China;

    Tsinghua Univ Comp Sci &

    Technol Sch State Key Lab Intelligent Technol &

    Syst Beijing 100084 Peoples R China;

    Acad Mil Med Sci Inst Med Equipment Tianjin 300161 Peoples R China;

    Acad Mil Med Sci Inst Med Equipment Tianjin 300161 Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 TP212;
  • 关键词

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