A Review of Data Fusion Techniques
TL;DR: This paper summarizes the state of the data fusion field and describes the most relevant studies, enumerate and explain different classification schemes for data fusion, and reviews the most common algorithms.
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Abstract: The integration of data and knowledge from several sources is known as data fusion. This paper summarizes the state of the data fusion field and describes the most relevant studies. We first enumerate and explain different classification schemes for data fusion. Then, the most common algorithms are reviewed. These methods and algorithms are presented using three different categories: (i) data association, (ii) state estimation, and (iii) decision fusion.
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