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Satellite Image Processing with Biologically-Inspired Computational Methods and Visual Attention.

机译:具有生物启发性计算方法和视觉注意的卫星图像处理。

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摘要

The human vision system is generally recognized as being superior to all known artificial vision systems. Visual attention, among many processes that are related to human vision, is responsible for identifying relevant regions in a scene for further processing. In most cases, analyzing an entire scene is unnecessary and inevitably time consuming. Hence considering visual attention might be advantageous. A subfield of computer vision where this particular functionality is computationally emulated has been shown to retain high potential in solving real world vision problems effectively. In this monograph, elements of visual attention are explored and algorithms are proposed that exploit such elements in order to enhance image understanding capabilities. Satellite images are given special attention due to their practical relevance, inherent complexity in terms of image contents, and their resolution. Processing such large-size images using visual attention can be very helpful since one can first identify relevant regions and deploy further detailed analysis in those regions only.;Bottom-up features, which are directly derived from the scene contents, are at the core of visual attention and help identify salient image regions. In the literature, the use of intensity, orientation and color as dominant features to compute bottom-up attention is ubiquitous. The effects of incorporating an entropy feature on top of the above mentioned ones are also studied. This investigation demonstrates that such integration makes visual attention more sensitive to fine details and hence retains the potential to be exploited in a suitable context. One interesting application of bottom-up attention, which is also examined in this work, is that of image segmentation. Since low salient regions generally correspond to homogenously textured regions in the input image; a model can therefore be learned from a homogenous region and used to group similar textures existing in other image regions. Experimentation demonstrates that the proposed method produces realistic segmentation on satellite images.;Top-down attention, on the other hand, is influenced by the observer's current states such as knowledge, goal, and expectation. It can be exploited to locate target objects depending on various features, and increases search or recognition efficiency by concentrating on the relevant image regions only. This technique is very helpful in processing large images such as satellite images. A novel algorithm for computing top-down attention is proposed which is able to learn and quantify important bottom-up features from a set of training images and enhances such features in a test image in order to localize objects having similar features. An object recognition technique is then deployed that extracts potential target objects from the computed top-down attention map and attempts to recognize them. An object descriptor is formed based on physical appearance and uses both texture and shape information. This combination is shown to be especially useful in the object recognition phase. The proposed texture descriptor is based on Legendre moments computed on local binary patterns, while shape is described using Hu moment invariants.;Several tools and techniques such as different types of moments of functions, and combinations of different measures have been applied for the purpose of experimentations. The developed algorithms are generalized, efficient and effective, and have the potential to be deployed for real world problems. A dedicated software testing platform has been designed to facilitate the manipulation of satellite images and support a modular and flexible implementation of computational methods, including various components of visual attention models.
机译:通常认为人类视觉系统优于所有已知的人工视觉系统。在与人类视觉有关的许多过程中,视觉注意力负责识别场景中的相关区域以进行进一步处理。在大多数情况下,分析整个场景是不必要的,并且不可避免地会浪费时间。因此,考虑视觉注意力可能是有利的。已经显示了计算机视觉的子领域,其中该特定功能可以通过计算进行仿真,从而在有效解决现实世界的视觉问题方面具有很高的潜力。在本专题中,探讨了视觉注意元素,并提出了利用这些元素以增强图像理解能力的算法。卫星图像由于其实用性,图像内容的内在复杂性和分辨率而受到特别关注。由于可以首先识别相关区域并仅在这些区域中进行进一步的详细分析,因此使用视觉注意力处理这种大尺寸图像可能会非常有帮助。直接从场景内容得出的自下而上的功能是其中的核心视觉注意力并帮助识别显着图像区域。在文献中,普遍使用强度,方向和颜色作为主要特征来计算自下而上的注意力。还研究了在上述特征之上合并熵特征的效果。这项研究表明,这种整合使视觉注意力对细节更加敏感,因此保留了在适当背景下加以利用的潜力。自下而上的注意力的一个有趣的应用是图像分割,它在本工作中也得到了研究。由于低显着区域通常对应于输入图像中的同质纹理区域;因此,因此,可以从同质区域中学习模型,并将其用于对其他图像区域中存在的相似纹理进行分组。实验表明,该方法可以对卫星图像进行真实的分割。另一方面,自上而下的注意力受观察者当前状态的影响,例如知识,目标和期望。可以利用它根据各种特征来定位目标对象,并通过仅专注于相关图像区域来提高搜索或识别效率。该技术在处理诸如卫星图像之类的大图像时非常有用。提出了一种用于计算自上而下的注意力的新颖算法,该算法能够从一组训练图像中学习和量化重要的自下而上的特征,并在测试图像中增强此类特征,以定位具有相似特征的对象。然后部署对象识别技术,该技术从计算出的自上而下的注意力图中提取潜在的目标对象,并尝试识别它们。对象描述符基于物理外观形成,并同时使用纹理和形状信息。这种组合在对象识别阶段特别有用。提出的纹理描述符基于在局部二进制模式上计算出的勒让德矩,而形状使用Hu矩不变性进行描述。;多种工具和技术,例如不同类型的函数矩,以及不同度量的组合已被应用。实验。所开发的算法是通用的,高效的和有效的,并且有可能被部署用于现实世界中的问题。设计了专用的软件测试平台,以方便卫星图像的操作并支持模块化和灵活地实现计算方法,包括视觉注意力模型的各个组成部分。

著录项

  • 作者

    Sina, Md Ibne.;

  • 作者单位

    University of Ottawa (Canada).;

  • 授予单位 University of Ottawa (Canada).;
  • 学科 Computer Science.
  • 学位 M.C.Sc.
  • 年度 2012
  • 页码 110 p.
  • 总页数 110
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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