噪声图像扫描中一维尺度空间脉冲检测算法的性能分析

Topkar V., Sood A.K., Kjell B.
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引用次数: 1

摘要

尺度空间表示是计算机视觉领域的一个研究热点。目前的研究重点主要集中在粗精调焦方法、图像重建和计算等方面。然而,在信号检测问题上,即利用尺度空间检测噪声图像扫描中信号模型的存在或不存在,研究还不多。本文提出了四种一维信号检测算法,用于在尺度空间域中将图像扫描中的脉冲信号从背景中分离出来。这些算法不需要任何阈值来检测任何尺度上的过零(zc)。不同的算法适用于具有不同噪声和杂波特征的图像扫描。一个简单的算法对低噪声和杂波的扫描效果最好。当噪声和杂波增加到一定程度时,必须使用更复杂的算法。用于脉冲和边缘检测的一维算法可用于检测杂乱和噪声背景中的二维封闭物体。这是通过逐行(和逐列)扫描图像并处理单个扫描来完成的。利用该方法,在若干实际图像上进行了验证。本文的另一个目的是对(i)单尺度系统与多尺度系统以及(ii)白噪声与杂波进行比较分析。这是通过对被白噪声或杂波破坏的单尺度和多尺度系统进行实验统计分析来完成的。计算检测概率、虚警概率、离域错误等性能指标。结果表明:(1)多尺度方法优于单尺度方法;(2)杂波比白噪声对性能的影响更大。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance Analysis of 1-D Scale-Space Algorithms for Pulse Detection in Noisy Image Scans

Scale-space representation is a topic of active research in computer vision. The focus of the research so far has been on coarse-to-fine focusing methods, image reconstruction, and computational aspects. However, not much work has been done on the signal detection problem, i.e., detecting the presence or absence of signal models from noisy image scans using the scale-space. In this paper we propose four 1-D signal detection algorithms for separating pulse signals in an image scan from the background in the scale-space domain. These algorithms do not need any thresholding to detect the zero-crossings (zc′s) at any of the scales. The different algorithms are applicable to image scans with different noise and clutter characteristics. A simple algorithm works best for scans having low noise and clutter. When noise and clutter increase sufficiently, a more sophisticated algorithm must be used. The 1-D algorithms for pulse and edge detection can be used to detect 2-D closed objects in cluttered and noisy backgrounds. This is done by scanning the image row-wise (and column-wise) and working on the individual scans. Using this method, the algorithms are demonstrated on several real life images. Another objective of this paper is to conduct comparative analysis of (i) a single-scale system vs a multiscale system and (ii) white noise vs clutter. This is done by conducting an experimental statistical analysis on single-scale and multiscale systems corrupted by white noise or clutter. Performance indices such as probability of detection, probability of false alarms, and delocalization errors are computed. The results indicate that (i) the multiscale approach is better than the single-scale approach and (ii) the degradation in performance is greater with clutter than with white noise.

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