Image Retrieval Using Landmark Indexing for Indoor Navigation

Dwaipayan Sinha, M. Ahmed, M. Greenspan
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引用次数: 13

Abstract

A novel approach is proposed for real-time retrieval of images from a large database of overlapping images of an indoor environment. The procedure extracts visual features from images using selected computer vision techniques, and processes the extracted features to create a reduced list of features annotated with the frame numbers they appear in. This method is named landmark indexing. Unlike some state-of-the-art approaches, the proposed method does not need to consider large image adjacency graphs because the overlap of the images in the map sufficiently increases information gain, and mapping of similar features to the same landmark reduces the search space to improve search efficiency. Empirical evidence from experiments on real datasets shows better performance and accuracy than other approaches. Experiments are further performed by integrating the image retrieval technique into a 3D real-time navigation system. This system is tested in several indoor environments and all experiments show highly accurate localization results.
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基于地标索引的室内导航图像检索
提出了一种从室内环境的大型重叠图像数据库中实时检索图像的新方法。该程序使用选定的计算机视觉技术从图像中提取视觉特征,并对提取的特征进行处理,以创建用它们出现的帧号注释的简化特征列表。这种方法被命名为地标索引。与现有的一些方法不同,该方法不需要考虑大型图像邻接图,因为地图中图像的重叠足以增加信息增益,并且将相似特征映射到相同的地标上减少了搜索空间,从而提高了搜索效率。在真实数据集上进行的实验表明,与其他方法相比,该方法具有更好的性能和准确性。将图像检索技术整合到三维实时导航系统中,进一步进行了实验。该系统在多个室内环境下进行了测试,所有实验均显示出高精度的定位结果。
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