Resilient Collaborative Intelligence For Adversarial Iot Environments

2019 22ND INTERNATIONAL CONFERENCE ON INFORMATION FUSION (FUSION 2019)(2019)

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摘要
Many IoT networks, including for battlefield deployments, involve the deployment of resource-constrained sensors with varying degrees of redundancy/overlap (i.e., their data streams possess significant spatiotemporal correlation). Collaborative intelligence, whereby individual nodes adjust their inferencing pipelines to incorporate such correlated observations from other nodes, can improve both inferencing accuracy and performance metrics (such as latency and energy overheads). Using realworld data from a multicamera deployment, we first demonstrate the significant performance gains (up to 14% increase in accuracy) from such collaborative intelligence, achieved through two different approaches: (a) one involving statistical fusion of outputs from different nodes, and (b) another involving the development of new collaborative deep neural networks (DNNs). We then show that these collaboration-driven performance gains are susceptible to adversarial behaviour by one or more nodes, and thus need resilient mechanisms to provide robustness against such malicious behaviour. We also introduce an under-development testbed at Singapore Management University (SMU), specifically designed to enable real-world experimentation with such collaborative IoT intelligence techniques.
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关键词
collaboration-driven performance gains,collaborative deep neural networks,multicamera deployment,latency energy overheads,performance metrics,inferencing accuracy,correlated observations,inferencing pipelines,individual nodes,spatiotemporal correlation,data streams,resource-constrained sensors,battlefield deployments,IoT networks,adversarial IoT environments,resilient collaborative intelligence,collaborative IoT intelligence techniques,resilient mechanisms,adversarial behaviour
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