HMM-embedded Bayesian network for heterogeneous command integration: applications to biped humanoid operation over the network

Y. Matsuyama, Youichi Nishida
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引用次数: 2

Abstract

A method to combine a Bayesian Network (BN) and Hidden Markov Models (HMMs) is presented. This compound system is applied to robot operations. The addressed problem and presented methods are novel with the following features: (1) BN and HMMs make a total decision system by accepting evidences from HMMs to the BN. (2) The HMM-embedded BN is applied to the human motion recognition for the biped humanoid operation. (3) Besides the motion recognition, the image recognition is incorporated by adding a BN subsystem. Thus, the total HMM-embedded BN can be regarded as an integrator of heterogeneous commands. (4) The human operator and the biped humanoid can be located on the other side of the network each other. (5) The piped humanoid follows various commands of human motions without falling down by showing better sophistication and operation success than HMM-alone and BN-alone systems. In addition to the above, an information supply to the BN from brain signals is realized through a combination with a Support Vector Machine (SVM).
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面向异构命令集成的hmm嵌入式贝叶斯网络:在网络上双足类人操作中的应用
提出了一种将贝叶斯网络(BN)与隐马尔可夫模型(hmm)结合的方法。该复合系统应用于机器人作业。所解决的问题和提出的方法具有以下特点:(1)网络模型和hmm模型通过接受hmm模型向网络模型提供的证据组成一个整体决策系统。(2)将嵌入hmm的神经网络应用于两足类人动作的人体运动识别。(3)在运动识别的基础上,增加了BN子系统,实现了图像识别。因此,嵌入hmm的总BN可以看作是异构命令的积分器。(4)人类操作者和双足类人机器人可以彼此位于网络的另一侧。(5)管道人形机器人遵循人体各种动作指令而不坠落,其复杂度和操作成功率均高于hm -单独系统和bn -单独系统。除此之外,通过与支持向量机(Support Vector Machine, SVM)相结合,实现脑信号对神经网络的信息供给。
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