Abstract:
Wireless spoofing attacks are easy
to launch and can significantly impact the performance of networks. Although
the identity of a node can be verified through cryptographic authentication,
conventional security approaches are not always desirable because of their
overhead requirements. In this paper, we propose to use spatial information, a
physical property associated with each node, hard to falsify, and not reliant
on cryptography, as the basis for 1) detecting spoofing attacks; 2) determining
the number of attackers when multiple adversaries masquerading as the same node
identity; and 3) localizing multiple adversaries. We propose to use the spatial
correlation of received signal strength (RSS) inherited from wireless nodes to
detect the spoofing attacks. We then formulate the problem of determining the
number of attackers as a multiclass detection problem. Cluster-based mechanisms
are developed to determine the number of attackers. When the training data are
available, we explore using the Support Vector Machines (SVM) method to further
improve the accuracy of determining the number of attackers. In addition, we
developed an integrated detection and localization system that can localize the
positions of multiple attackers.
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