首页> 外文学位 >Median based principal component analysis for edge detection on color images using partial derivatives of Boolean functions and a new correlated color similarity measure.
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Median based principal component analysis for edge detection on color images using partial derivatives of Boolean functions and a new correlated color similarity measure.

机译:基于中值的主成分分析,使用布尔函数的偏导数和新的相关颜色相似性度量对彩色图像进行边缘检测。

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摘要

The demand of color image processing is rapidly growing with the increased use of digital cameras and the internet. Applications of color images range from countless personal used to medicine, defense and security. Color images are more suitable for the human eye than gray scale images because humans can distinguish only approximately about twenty four shades of gray whereas they can see thousands of color shades.; This work will develop methods for color edge detection for image processing applications and metrics to evaluate the similarity between color images. The two general approaches taken for edge detection that will be investigated here are monochromatic edge detection and vector based edge detection. The first method involves processing each color component individually and then forming a final result via a fusion method. The second method involves analyzing each individual pixel value, as a vector. Both of these methods are straightforward to implement and analyze, making the models suitable for real time operations and inexpensive in hardware. We will test both of these methods on a variety of different color spaces to identify which color space works best for edge detection.; A traditional method for color edge detection is to convert color images to grayscale thus utilizing existing edge detection methods. The biggest challenge in this approach is being able to preserve as much edge information as possible during this conversion. This thesis will present a new color space, which is an improved version of the original principal component analysis algorithm. We will show that this new color space is able to better show edges than its original form.; Another common form of signal processing which is preformed on color images includes segmentation and data retrieval for recognition systems. For this to be done properly, a robust similarity measure has to be used. Unlike most of the methods that are currently available for this task, the new proposed method is based on the correlation of information between color planes and principal component analysis conversion of a color image into grayscale. This new measure is able to better analyze the similarity of color images.; Also, a new complete system for color edge detection based on this principle is developed and presented. This innovative design utilizes partial derivatives of Boolean functions for edge detection. Analysis will be preformed using our new measure. Quantitative and qualitative results testing the scheme on a database of natural and synthetic images will demonstrate the performance of the algorithms to be comparable, if not better, then other current state of the art methods.
机译:随着数码相机和互联网的日益普及,彩色图像处理的需求正在迅速增长。彩色图像的应用范围广泛,从无数个人使用到医学,国防和安全。彩色图像比灰度图像更适合人眼,因为人类只能区分大约二十四个灰度,而他们却可以看到数千个灰度。这项工作将开发用于图像处理应用程序的彩色边缘检测方法和评估彩色图像之间相似性的度量。这里将要研究的两种用于边缘检测的通用方法是单色边缘检测和基于矢量的边缘检测。第一种方法涉及分别处理每种颜色成分,然后通过融合方法形成最终结果。第二种方法涉及将每个单独的像素值作为矢量进行分析。这两种方法都易于实现和分析,从而使模型适合于实时操作且硬件价格便宜。我们将在各种不同的色彩空间上测试这两种方法,以确定哪种色彩空间最适合边缘检测。用于彩色边缘检测的传统方法是将彩色图像转换为灰度,从而利用现有的边缘检测方法。这种方法的最大挑战是在转换过程中如何保留尽可能多的边缘信息。本文将提出一个新的色彩空间,它是原始主成分分析算法的改进版本。我们将展示这种新的色彩空间比其原始形式能够更好地显示边缘。在彩色图像上执行的信号处理的另一种常见形式包括用于识别系统的分段和数据检索。为了正确完成此操作,必须使用鲁棒的相似性度量。与当前可用于此任务的大多数方法不同,新提出的方法基于彩色平面之间信息的相关性以及将彩色图像转换为灰度的主成分分析。这项新措施能够更好地分析彩色图像的相似性。此外,还开发并提出了一种基于此原理的完整的彩色边缘检测新系统。这种创新的设计利用布尔函数的偏导数进行边缘检测。将使用我们的新方法进行分析。在天然和合成图像数据库上测试该方案的定量和定性结果将证明该算法的性能与其他当前技术水平相当,甚至更好。

著录项

  • 作者

    Qazi, Sadaf.;

  • 作者单位

    Tufts University.$bElectrical Engineering.;

  • 授予单位 Tufts University.$bElectrical Engineering.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 M.S.
  • 年度 2008
  • 页码 118 p.
  • 总页数 118
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 无线电电子学、电信技术;
  • 关键词

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