低信噪比图像运动分析算法的性能比较

I. Aksu, F. Ildiz, J. Burl
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引用次数: 7

摘要

图像运动分析算法可用于生成一系列图像中物体的二维速度、三维速度方向、旋转和/或相对深度。这些算法大多设计用于高信噪比(SNR)图像(典型的光学和红外图像)。讨论了这些算法对低信噪比图像(典型的雷达和声纳图像)估计的适用性。运动分析算法可以分为两大类:光流算法和基于特征的算法。在一组标准化图像序列上,利用蒙特卡罗计算机模拟评估了噪声对若干基于光流的算法性能的影响。利用蒙特卡罗计算机模拟,评估了特征坐标扰动对基于特征的算法性能的影响。发现在存在噪声的情况下,1维快速傅里叶变换算法的效果最好。该算法简单,但在场景中存在多个运动物体时存在困难。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A comparison of the performance of image motion analysis algorithms operating on low signal to noise ratio images
Image motion analysis algorithms can be employed to generate the 2-D velocity, the direction of the 3-D velocity, the rotation, and/or the relative depth of objects in a sequence of images. Most of these algorithms are designed to operate on high-signal-to-noise-ratio (SNR) images (typical of optical and infrared images). The applicability of these algorithms to estimation for low-SNR images (typical of radar and sonar images) is addressed. Motion analysis algorithms can be segregated into two major categories: optical flow and feature-based algorithms. The effects of noise on the performance of a number of optical-flow-based algorithms are evaluated using Monte Carlo computer simulation on a set of standardized image sequences. The effects of feature coordinate perturbations on the performance of a feature-based algorithm are evaluated using Monte Carlo computer simulation. The 1-D FFT (fast Fourier transform) algorithm was found to yield the best results in the presence of noise. This algorithm is simple but has difficulty when multiple moving objects are present in the scene.<>
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