基于直方图阈值法的图像边缘检测与分割

V. Manjula
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引用次数: 5

摘要

提出了一种用于变光照条件下图像边缘扣除、分割和归一化照明的新方法。边缘检测是指在图像中应用平滑和噪声临床技术,对图像中的尖锐点进行识别和定位的过程。它在机器视觉、模式识别、物体识别、运动分析、模式识别、医学图像处理和生物医学成像等领域具有良好的应用前景。分割是指为了简化和改变图像的表示,便于分析,利用一组象素将数字图像分割成多个片段的过程。边缘检测突出图像中的高频成分。当涉及到有噪声的图像时,边缘检测变得更加困难。研究了基于模糊概念的平滑和噪声临床图像边缘检测方法。传统的边缘检测方法是在对大梯度敏感的像素强度场景中,将图像与算子(二维滤波器)变化进行卷积。边缘检测器形成不同图像的集合,并应用局部图像处理方法来定位强度函数的急剧变化。本文提出了直方图阈值法,以帮助图像的边缘检测和分割找到一种鲁棒的方法,无论分割方法是采用直方图阈值算法。本文比较了不同条件下的边缘检测和分割技术以及所选算法的强度像素值变化情况。
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Image Edge Detection and Segmentation by using Histogram Thresholding method
A new approach used for image edge deduction, segmentation and normalization illumination under varying lighting conditions are presented. Edge detection refers to the process of identifying and locating sharp by applying smooth and noisy clinical technic in an image. It has favorable applications in the fields such as machine vision, pattern recognition, object recognition, motion analysis, pattern recognition, medical image processing & biomedical imaging. Segmentation refers to the process of partitioning a digital image into the multiple segments using set of pixels as to simplify and change the representation of an image and easier to analyze. Edge detection highlights high frequency components in the image. Edge detection is becomes more arduous when it comes to noisy images. The study focuses on fuzzy concepts based edge detection in smooth and noisy clinical images. Traditional method of edge detection involves convolving the image with an operator (2-D filter) changes in pixel intensity scene which is constructed to be sensitive to large gradients. Edge detectors form a collection of different images and applying local image processing method to locate sharp changes in the intensity function. In this paper, histogram thresholding is proposed in order to help the edge detection and segmentation of image to found robust way regardless of the segmentation approach applying for histogram thresholding algorithm. This paper shows the comparison of edge detection & segmentation techniques under different conditions & variation of intensity pixel value of the selected algorithms.
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