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Alphabet-Based Multisensory Data Fusion and Classification Using Factor Graphs

机译:基于字母的多传感器数据融合和因子图分类

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摘要

The way of multisensory data integration is a crucial step of any data fusion method. Different physical types of sensors (optic, thermal, acoustic, or radar) with different resolutions, and different types of GIS digital data (elevation, vector map) require a proper method for data integration. Incommensurability of the data may not allow to use conventional statistical methods for fusion and processing of the data. A correct and established way of multisensory data integration is required to deal with such incommensurable data as the employment of an inappropriate methodology may lead to errors in the fusion process. To perform a proper multisensory data fusion several strategies were developed (Bayesian, linear (log linear) opinion pool, neural networks, fuzzy logic approaches). Employment of these approaches is motivated by weighted consensus theory, which lead to fusion processes that are correctly performed for the variety of data properties.
机译:多传感器数据集成的方式是任何数据融合方法的关键步骤。具有不同分辨率的不同物理类型的传感器(光学,热,声或雷达)以及不同类型的GIS数字数据(高程,矢量地图)需要一种适当的数据集成方法。数据的不可通约性可能不允许使用传统的统计方法来融合和处理数据。由于使用不合适的方法可能会导致融合过程中的错误,因此需要正确且已建立的多传感器数据集成方式来处理此类不可估量的数据。为了执行适当的多传感器数据融合,开发了几种策略(贝叶斯,线性(对数线性)意见库,神经网络,模糊逻辑方法)。这些方法的使用受到加权共识理论的推动,该理论导致融合过程针对各种数据属性正确执行。

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