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首页> 外文期刊>Geoscience and Remote Sensing Letters, IEEE >Geolocalization of Crowdsourced Images for 3-D Modeling of City Points of Interest
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Geolocalization of Crowdsourced Images for 3-D Modeling of City Points of Interest

机译:用于城市景点3D建模的众包图像的地理定位

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摘要

Geolocalization of crowdsourced images is a challenging task that is getting increased attention nowadays due to the rise in popularity of geotagging and its applications. Among these applications, 3-D modeling from Internet photograph collections is a very active research topic with great promise and potential. In order to automize and optimize the crowdsourced 3-D modeling process, this letter proposes a novel framework that can be used for automatic 3-D modeling of city points of interest (POIs), such as statues, buildings, and temporary artworks. Crowdsourced images related to the POI and its location are collected using a geographical Web search process based on geotags and semantic geodata. Subsequently, panoramic Google Street View (SV) images are used to geolocalize the images. If enough feature matches are found between the image and one of the SV images, the image is annotated with the location metadata of the best matching image from the SV database. Otherwise, when too few matches are found, the image most probably will not contain the POI in its field of view (FOV), and it is filtered out. For optimal performance, the equirectangular panoramic SV images are transformed into an SV data set of perspective cutouts facing the POI with different pitches and FOVs. From this data set, a basic 3-D model of the POI and its environment is generated. Finally, the geolocalized crowdsourced images refine and optimize the 3-D model using the matching matrix that is generated from the geolocalization results. Experiments show the feasibility of our approach on different types of city POIs. Our main contribution is that we can decrease the 3-D modeling computation time by more than half and significantly improve the model completeness. Finally, it is important to remark that the applicability of the proposed framework is not limited to 3-D modeling but can also be used in other domains, such as geoaugmented reality and location-based media annotation.
机译:众包图像的地理定位是一项具有挑战性的任务,由于地理标记及其应用的日益普及,如今它正受到越来越多的关注。在这些应用程序中,基于Internet照片集的3D建模是一个非常活跃的研究主题,具有广阔的前景和潜力。为了自动化和优化众包的3-D建模过程,这封信提出了一个新颖的框架,可用于对景点,雕像,建筑物和临时艺术品等城市兴趣点(POI)进行自动3-D建模。使用基于地理标签和语义地理数据的地理Web搜索过程,收集与POI及其位置相关的众包图像。随后,使用全景Google Street View(SV)图像对图像进行地理定位。如果在图像和SV图像之一之间找到足够的特征匹配,则使用SV数据库中最匹配的图像的位置元数据对图像进行注释。否则,当找到的匹配项太少时,图像很可能在其视场(FOV)中不包含POI,并被滤除。为了获得最佳性能,将等矩形全景SV图像转换为具有不同间距和FOV的面向POI的透视切口的SV数据集。根据此数据集,可以生成POI及其环境的基本3-D模型。最后,地理定位的众包图像使用从地理定位结果生成的匹配矩阵来精炼和优化3-D模型。实验表明,我们的方法适用于不同类型的城市POI。我们的主要贡献在于,我们可以将3-D建模的计算时间减少一半以上,并显着提高模型的完整性。最后,重要的一点是,提出的框架的适用性不仅限于3-D建模,还可以用于其他领域,例如地理增强现实和基于位置的媒体注释。

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