Abstract
IoT(Internet of things), for the most part, comprises of the various scope of Internet-associated gadgets and hubs. In the context of military and defence systems (called as IoBT) these gadgets could be personnel wearable battle outfits, tracking devices, cameras, clinical gadgets etc., The integrity and safety of these devices are critical in mission success and it is of utmost importance to keep them secure. One of the typical ways of the attack on these gadgets is through the use of malware, whose aim could be to compromise the device and or breach the communications. Generally, these IoBT gadgets and hubs are a much more significant target for cyber criminals due to the value they pose, more so than IoT devices. In this paper we attempt at creating a significant learning based procedure to distinguish, classify and tracksuch malware in IoBT(Internet of battlefield things) through operational codes progression. This is achieved by transforming the aforementioned OpCodes into a vector space, upon which a Deep Eigen space learning technique is applied to differentiate between harmful and safe applications. For robust classification, Support vector machine and n gram Sequencing algorithms are proposed in this paper. Moreover, we evaluate the quality of our proposed approach in malware recognition and also its maintainability against garbage code injection assault. These results are presented on a web page which has separate components and levels of accessibility for user and admin credentials. For the purpose of tracking the prevalence of various malwares on the network, counts and against garbage code injection assault. These results are presented on a web page which has separate components and levels of accessibility for user and admin credentials. For the purpose of tracking the prevalence of various malwares on the network, counts and trends of different malicious opcodes are displayed for both user and admin. Thereby our proposed approach will be beneficial for the users, especially for those who want to communicate confidential information within the network. It is also beneficial if a user wants to know whether a message is secure or not. This has also been made malware test accessible, which ideally will profit future research endeavors.
Highlights
The Internet of Things (IoT) is an add-on of the traditional internet, which allows a large number of smart devices such as home appliances, controllers, network cameras, and sensors to connect and share information
We explore the potential of using Deep Eigen Space Learning for detecting the IoT and Internet of Battlefield Things (IoBT) malware
Most of the IOBT and IoT systems contain a prolonged series of instructions called Opcodes which should be executed on device central processor
Summary
The Internet of Things (IoT) is an add-on of the traditional internet, which allows a large number of smart devices such as home appliances, controllers, network cameras, and sensors to connect and share information. The Internet of Things has robust military applications in a connected network that increases risk assessment and responsive time. The Internet of Battlefield Things (IoBT) involves the complete realization of omnipresent sensing, prevalent computing, and practical and remarkable communication, leading to an unparalleled scale of information produced by the sensors and computer units. This increasing presence in a wide range of applications, along with their processing and computing capabilities, making them a valuable attack target, such as malware designed to compromise the security of such devices. We explore the potential of using Deep Eigen Space Learning for detecting the IoT and IoBT malware
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