The usage of Unmanned Aerial Vehicles (UAVs) is accessible for different applications to a wide range of users. However, this wide range of users raises a great concern about the threat (passive or active threats) of malicious actors who can use UAVs for criminal activities. The detection of UAVs is considered to be the first step in the process of UAVs countering (c-UAV). Nowadays, the c-UAV applications offer systems that include different sensors such as electro-optical, thermal, acoustic, radar and radio frequency sensors. Information gathered by these sensors can be fused in order to increase the reliability of threat's detection, classification and identification. It is necessary to have datasets from the different sensors in order to develop methods and algorithms for detection and classification of UAVs. This paper presents a dataset of communication signals between the drone and the control station that is used in the process of detection and classification.
This paper presents the System for internal communication and its functional compatibility with embedded subsystems inside the command armored vehicle. The paper discusses about possible effects of different types of electromagnetic interference on use of the device and the potential solution. Analysis of the obtained results and functional checks of the device aim the presentation of modernity, perspective and ability to meet the rising demands in future different and heterogeneous network technology. The diversity and complexity in managing this device have been the main driving factors in the evolution and enhancement of the military communication to provide control for not only packet based domains, but also to reduce voice and data latency transmission and to increase the response for battle request in real time. In this paper the method and technology which suggest possible application in the military environment where this device can resolve the problems of several network and devices types are shown.
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