在可能性理论框架下管理不精确的地图和图像数据

Khensa Daoudi, Maroua Yamami, S. Benferhat, Lila Méziani
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引用次数: 0

摘要

在许多应用中,不精确信息的表示和组合是一个重要的问题。本文首先处理从地图和城市网络图像中检测到的物体的不精确位置的表示。特别是,它处理来自不同来源的不确定信息的组合问题,以解决与被探测物体的地理坐标有关的不准确问题。为了说明本文提出的表示和组合模式,我们将重点放在废水网络数据上。更准确地说,我们在研究中使用人孔检测问题作为目标检测的一个例子。我们将使用两个数据来源:i)从谷歌街景工具获得的图像和ii)卫生网络地图。由于被探测物体的地理位置是不精确的,我们将使用可能性理论来表示这种不确定性。可能性理论特别适合表示定性的不确定性,其中只有合理性关系(不同地理位置之间的候选是人孔的实际位置)是重要的。最后,我们建议使用两种聚合模式,即合取和析取模式,来组合与检测对象相关的可能性分布。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Managing imprecise map and image data in a possibility theory framework
The representation and combination of imprecise information is an important topic present in many applications. This paper first deals with the representation of imprecise positions of objects detected from maps and images of urban networks. In particular, it deals with the question of the combination of uncertain information, from different sources, to address the problem of inaccuracies related to the geographical coordinates of the detected objects. To illustrate the representation and the combination modes presented in this paper, we focus on wastewater networks data. More precisely, we use the manhole detection problem as an example of object detection in our study. We will use two sources of data: i) the images obtained from the google street view utility and ii) the maps of the sanitation networks. As the geographical positions of the detected objects are imprecise, we will use possibility theory to represent this uncertainty. Possibility theory is particularly suitable for representing qualitative uncertainty, where only the plausibility relation (between the different geographical positions that are candidates to be the actual position of the manholes) is important. Finally, we propose to use two aggregation modes, conjunctive and disjunctive modes, to combine the possibility distributions associated with the detected objects.
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