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A Memory-Efficient Bit-Split Parallel String Matching Using Pattern Dividing for Intrusion Detection Systems

机译:使用模式划分的内存有效位分割并行字符串匹配用于入侵检测系统

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摘要

For the low-cost hardware-based intrusion detection systems, this paper proposes a memory-efficient parallel string matching scheme. In order to reduce the number of state transitions, the finite state machine tiles in a string matcher adopt bit-level input symbols. Long target patterns are divided into subpatterns with a fixed length; deterministic finite automata are built with the subpatterns. Using the pattern dividing, the variety of target pattern lengths can be mitigated, so that memory usage in homogeneous string matchers can be efficient. In order to identify each original long pattern being divided, a two-stage sequential matching scheme is proposed for the successive matches with subpatterns. Experimental results show that total memory requirements decrease on average by 47.8 percent and 62.8 percent for Snort and ClamAV rule sets, in comparison with several existing bit-split string matching methods.
机译:对于基于硬件的低成本入侵检测系统,本文提出了一种内存有效的并行字符串匹配方案。为了减少状态转换的次数,字符串匹配器中的有限状态机磁贴采用位级输入符号。长目标模式分为固定长度的子模式;确定性有限自动机和子模式一起建立。使用模式划分,可以减轻目标模式长度的变化,从而可以有效利用同类字符串匹配器中的内存。为了识别被分割的每个原始长图案,针对具有子图案的连续匹配,提出了两阶段的顺序匹配方案。实验结果表明,与几种现有的位拆分字符串匹配方法相比,Snort和ClamAV规则集的总内存需求平均减少了47.8%和62.8%。

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