Data transmission between two or more digital devices in industry and government demands secure and agile technology. Digital information distribution often requires deployment of Internet of Things (IoT) devices and Data Fusion techniques which have also gained popularity in both, civilian and military environments, such as, emergence of Smart Cities and Internet of Battlefield Things (IoBT). This usually requires capturing and consolidating data from multiple sources. Because datasets do not necessarily originate from identical sensors, fused data typically results in a complex Big Data problem. Due to potentially sensitive nature of IoT datasets, Blockchain technology is used to facilitate secure sharing of IoT datasets, which allows digital information to be distributed, but not copied. However, blockchain has several limitations related to complexity, scalability, and excessive energy consumption. We propose an approach to hide information (sensor signal) by transforming it to an image or an audio signal. In one of the latest attempts to the military modernization, we investigate sensor fusion approach by investigating the challenges of enabling an intelligent identification and detection operation and demonstrates the feasibility of the proposed Deep Learning and Anomaly Detection models that can support future application for specific hand gesture alert system from wearable devices.
翻译:在工业和政府中,两个或两个以上数字装置之间的数据传输需要安全和灵活的技术。数字信息传播往往需要部署诸如智能城市的出现和战地物体的网络等民用和军事环境中也日益流行的物(IoBT)装置和数据融合技术。这通常需要从多种来源获取和整合数据。由于数据集不一定来自相同的传感器,集成数据通常会产生复杂的大数据问题。由于IoT数据集的潜在敏感性质,链式技术被用于促进安全分享IoT数据集,从而可以传播数字信息,但不能复制。然而,块链在复杂性、可缩放性和过度能源消耗方面有若干限制。我们建议一种办法,通过将信息(传感器信号)转换成图像或音频信号来隐藏信息(传感器信号)。在最近的军事现代化尝试中,我们通过调查促成智能识别和探测操作的挑战来调查传感器聚合方法,并展示拟议的深学习和异常探测模型的可行性,这些模型可以支持未来对具体手势警报系统应用。