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首页> 外文期刊>International Journal of Distributed Sensor Networks >HMM and Rule-Based Hybrid Intruder Detection Approach by Synthesizing Decisions of Sensors
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HMM and Rule-Based Hybrid Intruder Detection Approach by Synthesizing Decisions of Sensors

机译:HMM与传感器综合决策的基于规则的混合入侵检测方法

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摘要

Combining individual sensor decisions can be an effective way for the enhancement of the final decision on sensor fields for intruder detection. This paper proposes a novel methodology to unify the decisions from individual sensors on a sensor field through the (hidden Markov model) HMM and rules. The HMM especially provides a stochastic decision out of the individual sensor decisions on the sensor field; then it is filtered through rule inferences reflecting the knowledge of movement patterns on the level of the sensor field, such as spatial-temporal information and factual information on the movement of objects. This use of contextual knowledge remarkably improves the final decision for the detection. Also, this paper proposes the discretization method to express the state space of sensor field, and the performance evaluation is given by simulations.
机译:组合各个传感器决策可能是增强入侵者检测传感器领域最终决策的有效方法。本文提出了一种新颖的方法,通过(隐马尔可夫模型)HMM和规则统一来自传感器领域中各个传感器的决策。 HMM特别提供了传感器领域中各个传感器决策中的随机决策;然后通过规则推论对其进行过滤,这些规则推论反映了传感器领域水平上运动模式的知识,例如有关对象运动的时空信息和事实信息。上下文知识的这种使用显着改善了检测的最终决策。此外,本文提出了一种离散化方法来表示传感器场的状态空间,并通过仿真给出了性能评估。

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