Measurement-Based Statistical Fusion Methods for Distributed Sensor Networks

    Research output: Chapter in Book/Report/Conference proceedingChapterpeer-review

    Abstract

    In distributed sensor networks (DSNs), the fusion problems naturally arise when overlapping regions are covered by a set of sensor nodes. The sensor nodes typically consist of specialized sensor hardware and/or software, and consequently their outputs are related to the actual object features in a complicated manner, which is often modeled by probability distributions. In DSNs, the sensor distributions can be arbitrarily complicated. In addition, deriving closed form expressions for sensor distributions is a very difficult and expensive task since it requires the knowledge of a variety of areas such as device physics, electrical engineering, and statistical modeling. Due to the generic nature of the sensor fusion problem described here, it is related to a number of similar problems in a wide variety of areas. In general, for sensor fusion problems, however, the interdependence between the sensors is a main feature to be exploited to overcome the limitations of single sensors.

    Original languageEnglish
    Title of host publicationDistributed Sensor Networks
    Subtitle of host publicationSecond Edition: Image and Sensor Signal Processing
    PublisherCRC Press
    Pages387-413
    Number of pages27
    ISBN (Electronic)9781439862834
    ISBN (Print)9781439862827
    DOIs
    StatePublished - Jan 1 2016

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