基于视觉的室内环境模型生成

Darius Burschka, Christof Eberst, C. Robl
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引用次数: 22

摘要

本文提出了我们的方法来检索一个部分已知的室内环境的可靠的三维描述。我们描述了如何通过轮廓跟踪来预处理来自摄像机的传感器数据,以提取物体的边界线,以及如何将这些信息转换为世界的三维环境模型。我们介绍了一个动态地图,它与各种传感器系统在一个闭环中运行,通过过滤和贡献一定的知识来提高它们的性能。这种过滤依赖于移动机器人从不同位置收集传感器读数的能力。我们方法的一个重要部分是动态地图之间的交互,存储和过滤传入的信息,以及基于结构和参考对象预测缺失传感器特征的模块。这种相互作用有助于生成更准确的模型,该模型还包含无法从单个传感器视图中提取的较差的可检测特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vision based model generation for indoor environments
This paper presents our approach to retrieve a dependable three-dimensional description of a partially known indoor environment. We describe the way the sensor data from a video camera is preprocessed by contour tracing to extract the boundary lines of the objects and how this information is transformed into a three-dimensional environmental model of the world. We introduce a dynamic map that operates in a closed loop with various sensor systems improving their performance by filtering and contributing certain knowledge. The filtering relies on the capability of a mobile robot to gather sensor readings from different positions. An important part of our approach is the interaction between the dynamic map, storing and filtering the incoming information, and a module predicting missing sensor features based on structures and reference objects. This interaction helps to generate a more accurate model containing also poor detectable features, that are impossible to extract from a single sensor view.
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