基于FMI描述子方法的广角中央凹传感器偏心估计

S. Shimizu, J. Burdick
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引用次数: 0

摘要

本文提出了一种估算中央凹传感器入射角对应的偏心率的方法。该方法采用Fourier-Mellin不变量描述子来估计旋转、尺度和平移,同时考虑了空间变图像的几何畸变和中央凹传感器的非均匀分辨率。本文主要关注以下两点。一是利用离散小波变换计算的多分辨率图像,适当地降低注视点引起的噪声。另一种是使用可变窗函数(尽管窗函数通常用于减少由信号两端引起的DFT泄漏)来改变有效视场(FOV),以不牺牲高精度。仿真比较了当分辨率和视场水平分别改变时,均匀分辨率和非均匀分辨率下注视噪声的均方根(RMS)。实验结果表明,该方法与中央凹传感器获得的广角空间变像一致,在中心视场内不牺牲较高的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Eccentricity estimator for wide-angle fovea sensor by FMI descriptor approach
This paper proposes a method for estimating eccentricity that corresponds to an incident angle to a fovea sensor. The proposed method applies Fourier-Mellin Invariant descriptor for estimating rotation, scale, and translation, by taking both geometrical distortion and non-uniform resolution of a space-variant image by the fovea sensor into account. The following 2 points are focused in this paper. One is to use multi-resolution images computed by Discrete Wavelet Transform for reducing noise caused by foveation properly. Another is to use a variable window function (although the window function is generally used for reducing DFT leakage caused by both ends of a signal.) for changing an effective field of view (FOV) in order not to sacrifice high accuracy. The simulation compares the root mean square (RMS) of the foveation noise between uniform and non-uniform resolutions, when a resolution level and a FOV level are changed, respectively. Experimental results show that the proposed method is consistent with the wide-angle space-variant image by the fovea sensor, i.e., it does not sacrifice high accuracy in the central FOV.
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