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Cross-Layered Hidden Markov Modeling for Surveillance Event Recognition

机译:监控事件识别的分层隐马尔可夫模型

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摘要

In this paper, a novel Cross-Layered Hidden Markov Model (CLHMM) is proposed for high accuracy and low complexity Surveillance Event Recognition (SER). Unlike existing Layered HMM (LHMM) whose inferences are limited in adjacent layers, cross-layer inferences are designed in CLHMM to strengthen reasoning efficiency and reduce computational complexity. One Common Feature Particle Set (CFPS) is also developed in CLHMM to offer the model an assembly of pixel level observations, expert knowledge and Baum-Welch algorithm are combined to achieve optimized performance in CLHMM learning. Experimental results on typical surveillance test sequences showed that CLHMM outperforms LHMM in terms of accuracy and computational complexity.
机译:本文针对高准确度和低复杂度的监视事件识别(SER),提出了一种新颖的交叉隐马尔可夫模型(CLHMM)。与现有的分层HMM(LHMM)的推理仅限于相邻层不同,CLHMM中设计了跨层推理以增强推理效率并降低计算复杂性。 CLHMM中还开发了一个通用特征粒子集(CFPS),以为模型提供像素级观测值的组合,专家知识和Baum-Welch算法相结合,以实现CLHMM学习的优化性能。在典型的监视测试序列上的实验结果表明,CLHMM在准确性和计算复杂性方面优于LHMM。

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