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采用MSBN多智能体协同推理的智能农业车辆环境识别
引用本文:郭文强,高晓光,侯勇严,周强.采用MSBN多智能体协同推理的智能农业车辆环境识别[J].智能系统学报,2013,8(5):453-458.
作者姓名:郭文强  高晓光  侯勇严  周强
作者单位:1.陕西科技大学 电气与信息工程学院,陕西 西安 710021; 2.西北工业大学 电子信息学院,陕西 西安710129
摘    要:为了解决智能农业车辆对所处复杂农田环境的识别信度定量分析困难的问题,提出了基于多连片贝叶斯网(MSBN)多智能体协同推理的目标识别算法.该方法把多智能体图像采集系统的局部信息表征在MSBN模型中,在观测不完备条件下,虽然单个智能体仅拥有目标的局部观测信息,但利用重叠子域信息的更新可以进行子网间消息的传播.利用MSBN局部推理和子网间信度通信的全局推理对多源信息进行融合,以提高识别性能.实验结果表明,与传统神经网络或BN方法相比,基于MSBN目标识别算法有效地对多源信息进行了补充,可以提高农业车辆在复杂环境进行识别的准确性.

关 键 词:智能农业车辆  MSBN  多智能体  协同推理  环境识别

Environment recognition of intelligent agricultural vehicles based on MSBN and multi-agent coordinative inference
GUO Wenqiang,GAO Xiaoguang,HOU Yongyan,ZHOU Qiang.Environment recognition of intelligent agricultural vehicles based on MSBN and multi-agent coordinative inference[J].CAAL Transactions on Intelligent Systems,2013,8(5):453-458.
Authors:GUO Wenqiang  GAO Xiaoguang  HOU Yongyan  ZHOU Qiang
Affiliation:1.College of Electrical and Information Engineering, Shaanxi University of Science and Technology, Xi′an 710021, China; 2.School of Electronics and Information, Northwestern Polytechnical University, Xi′an 710129, China
Abstract:In order to solve the problem existing in the agricultural environment recognition of intelligent vehicles, due to the difficulty of conducting quantitative analysis of the reliability of such recognition, a target recognition algorithm for multi-agent cooperative inference based on the multiply sectioned Bayesian network (MSBN) has been proposed. This method characterizes local information of the multi-agent image acquiring system with MSBN model. In the circumstance of incomplete observations, although each single agent may only capture some local observation information from the target, the message propagation among subnets can be achieved by information update in the overlapping sub domains. By combining the local inference and global inference of reliability communication between subnets in MSBN, the multi-source information was merged to enhance recognition performance. By comparing the traditional neural network and BN method, experimental results illustrate that, the target recognition algorithm based on MSBN can effectively supplement multi-source information, and thus, can improve the recognition accuracy of agricultural vehicles in the complicated environment.
Keywords:intelligent agricultural vehicle  multiply sectioned Bayesian network (MSBN)  multi-agent  coordinative inference  environment recognition
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