3D scene modeling using sensor fusion with laser range finder and image sensor

Yunqian Ma, Z. Wang, Michael E. Bazakos, W. Au
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引用次数: 7

Abstract

Activity detection (e.g. recognizing people's behavior and intent), when used over an extended range of applications, suffers from high false detection rates. Also, activity detection limited to 2D image domain (symbolic space) is confined to qualitative activities. Symbolic features, represented by apparent dimensions, i.e. pixels, can vary with distance or viewing angle. One way to enhance performance is to work within the physical space, where object features are represented by their physical dimensions (e.g. inches or centimeters) and are invariant to distance or viewing angle. In this paper, we propose an approach to construct a 3D site model and co-register the video with the site model to obtain real-time physical reference at every pixel in the video. We present a unique approach that creates a 3D site model via fusion of laser range sensor and a single camera. We present experimental results to demonstrate our approach.
基于激光测距仪和图像传感器融合的三维场景建模
活动检测(例如,识别人们的行为和意图)在广泛的应用中使用时,会受到高误检率的影响。此外,仅限于二维图像域(符号空间)的活动检测也仅限于定性活动。符号特征,由表观尺寸表示,即像素,可以随距离或视角而变化。提高性能的一种方法是在物理空间内工作,其中对象特征由其物理尺寸(例如英寸或厘米)表示,并且与距离或视角保持不变。在本文中,我们提出了一种构建三维站点模型的方法,并将视频与站点模型进行共配准,以获得视频中每个像素的实时物理参考。我们提出了一种独特的方法,通过激光距离传感器和单个相机的融合来创建3D站点模型。我们给出了实验结果来证明我们的方法。
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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