On-Line RSSI-Range Model Learning for Target Localization and Tracking

Abstract

This article belongs to the Special Issue QoS in Wireless Sensor/Actuator Networks and Systems: http://www.mdpi.com/journal/jsan/special_issues/QoS_netw_systThe interactions of Received Signal Strength Indicator (RSSI) with the environment are very difficult to be modeled, inducing significant errors in RSSI-range models and highly disturbing target localization and tracking methods. Some techniques adopt a training-based approach in which they off-line learn the RSSI-range characteristics of the environment in a prior training phase. However, the training phase is a time-consuming process and must be repeated in case of changes in the environment, constraining flexibility and adaptability. This paper presents schemes in which each anchor node on-line learns its RSSI-range models adapted to the particularities of its environment and then uses its trained model for target localization and tracking. Two methods are presented. The first uses the information of the location of anchor nodes to dynamically adapt the RSSI-range model. In the second one, each anchor node uses estimates of the target location –anchor nodes are assumed equipped with cameras—to on-line adapt its RSSI-range model. The paper presents both methods, describes their operation integrated in localization and tracking schemes and experimentally evaluates their performance in the UBILOC testbedUnión Europea EU Project MULTIDRONE H2020-ICT-2016-2017/H2020-ICT-2016-1Unión Europea EU Project AEROARMS H2020-ICT-2014-1-644271AEROMAIN Spanish R&D plan DPI2014-59383-C2-1-RUnión Europea EU Project AEROBI H2020-ICT-2015-1-68738

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