基于多传感器配准先验的球面全景构建及其实时硬件

Omer Cogal, Vladan Popovic, Y. Leblebici
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引用次数: 10

摘要

本文提出了一种提高球面多传感器成像系统全景图像质量的新方法。新方法由两部分组成。第一种方法是将全景图生成问题映射到马尔可夫随机场(MRF)上,然后从初始似然估计后验概率。该方法的新颖性是基于从多个摄像机的配准信息中提取先验证据,并在无向图上估计期望值。该方法的第二部分是一种几何方法,旨在更好地估计初始先验,这也是以前没有应用过的。这两种方法的目的都是为了减少由于多相机系统的特性而产生的视差误差和重影效应。结果表明,与直接使用从配准信息中提取的独立强度系数相比,利用之前的配准信息对全景图的每个像素进行基于邻域的局部概率分布,可以获得更好的效果。提供了视觉对比,以显示所取得的质量提升,在无缝和更自然的全景图像,更少的重影效果。由于配准先验在4连通的邻域内只需一次迭代就能有效地利用,因此不需要基于强度的循环迭代推理方法。因此,所提出的方法适用于实时硬件实现。提出了一种实时操作方法的硬件实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spherical Panorama Construction Using Multi Sensor Registration Priors and Its Real-Time Hardware
In this work, a novel method is presented to improve the quality of panoramic images on a spherically arranged multi sensor imaging system. The new method is composed of two parts. The first approach proposed is based on mapping the panorama generation problem onto a Markov Random Field (MRF) and then estimating posterior probabilities from initial likelihoods. The novelty of approach is based on extracting the prior evidence from the registration information of multiple cameras and estimating expected value on an undirected graph. The second part of the method is a geometrical approach targeting a better estimation for the initial priors, which is also not applied before. The aim of both approaches is to decrease the parallax errors and ghosting effects which occur due to the nature of multi camera systems. It is shown that instead of directly using independent intensity coefficients extracted from registration information, applying a neighborhood based local probability distribution for each pixel of panorama utilizing the registration information as prior gives better results. Visual comparisons are provided to show the achieved quality enhancement in terms of seamless and more natural panoramic image with less ghosting effects. Since the registration priors are used effectively with a single iteration step in a 4 connected neighborhood, the need for an intensity based loopy and iterative inference method is prohibited. Hence, the proposed methods are suitable for real-time hardware implementation. A hardware implementation of the method for real-time operation is proposed.
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