Voting spaces cooperation for 3D plane detection from monocular image sequences

Qiong Nie, S. Bouchafa, A. Mérigot
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引用次数: 2

Abstract

This paper deals with 3D scene reconstruction from an on-board moving camera in the context of automatic driver assistance systems. The aim of our study is to detect any kind of parameterized surface from a moving camera without camera calibration or any prior knowledge about the vehicle egomotion. We assume that the 3D scene is a set of 3D planes that are classified into three categories according to their orientation: lateral planes (buildings), horizontal planes (the road) and frontal planes (moving cars or crossing pedestrians). We propose an iterative voting process that takes advantages of some specific iso-velocity curves properties in order to build a set of appropriate voting spaces. Each of them facilitates the detection of a specific plane model. A tough problem as the detection of a parameterized surface from a moving camera is reduced to an easy maxima finding in several voting spaces. We focus in this paper on the iterative scheme that allows to deal with several spaces at the same time. We choose to adapt an histogram splitting approach in order to achieve a complete plane detection process.
单目图像序列三维平面检测的投票空间协同
本文研究了自动驾驶辅助系统中车载移动摄像机的三维场景重建问题。我们研究的目的是在没有相机校准或任何关于车辆自运动的先验知识的情况下,从移动相机中检测任何类型的参数化表面。我们假设3D场景是一组3D平面,根据它们的方向分为三类:横向平面(建筑物),水平平面(道路)和正面平面(移动的汽车或穿过的行人)。我们提出了一种迭代投票过程,利用一些特定的等速度曲线属性来构建一组适当的投票空间。它们中的每一个都有助于检测特定的平面模型。从移动的摄像机中检测参数化曲面是一个棘手的问题,它被简化为在几个投票空间中找到一个简单的最大值。本文重点研究了允许同时处理多个空间的迭代方案。为了实现完整的平面检测过程,我们选择采用直方图分割方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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