边缘检测中与噪声相关的最优尺度

A. Khashman
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引用次数: 4

摘要

图像处理技术有许多共同的问题,许多研究人员花费时间和金钱来解决这些问题并试图找到解决方案。这些问题包括在低对比度图像中较差的边缘检测,识别速度快,计算成本高。尺度空间分析是低对比度到高对比度图像中目标边缘检测的有效解决方案。然而,这种方法既耗时又耗量大。如果在尺度空间边缘检测中定义一个最优尺度(理想尺度),则可以略微减少这些费用。本文报道了一种利用图像中的噪声来检测二维投影图像中的三维物体的新方法。该方法基于为整个图像选择一个最优尺度(理想尺度),在此尺度空间边缘检测可以应用。理想尺度的选择是基于“最优边缘检测尺度(理想尺度)取决于图像内的噪声”这一假设。本文旨在提供图像中最优尺度对噪声依赖性的实验证据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Noise-dependent optimal scale in edge detection
Image processing techniques have common problems that have had many researchers spending time and money addressing them and trying to find solutions. These problems include poor edge detection in low contrast images, speed of recognition and high computational cost. Scale space analysis is an efficient solution to the edge detection of objects in low to high contrast images. However, this approach is time consuming and computationally expensive. These expenses can be marginally reduced if an optimal scale (ideal scale) is defined in scale space edge detection. This paper reports on a new approach to detecting 3-dimensional objects in their 2-dimensional projected images using noise within the images. The novel idea is based on selecting one optimal scale (ideal scale) for the entire image at which scale space edge detection can be applied. The selection of an ideal scale is based on the hypothesis that the optimal edge detection scale (ideal scale) depends on the noise within an image"". This paper aims at providing the experimental evidence on the dependency of optimal scale on noise within images.""
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