Mobile robot recognition using Bayesian penalization with neural approach

M. Larbi, B. Aek
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引用次数: 2

Abstract

We present in this paper a Bayesian classifier, based on neural probabilistic approach using radial basis function (RBF) and based on an improved version of orthogonal least square algorithm (OLS) for fast and incremental learning and automatic creation of hidden neurons. Applied to the famous case like inside a building, this classifier must assure a semantic localization, established on a realistic approach. The will wish to have a discrimination approach in the most possible case by using a generic and powerful representation of knowledge based on conditional and priori probabilities, error costs - case of decision throws etc., this classifier have been generated by neural network. Therefore in place to have a binary decision such as the hard decision like impasse, the mobile robot decides for example 90% of impasse situation
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基于贝叶斯惩罚的移动机器人识别
本文提出了一种基于径向基函数(RBF)的神经概率方法和基于改进的正交最小二乘算法(OLS)的贝叶斯分类器,用于快速增量学习和自动创建隐藏神经元。应用于建筑内部等著名案例时,该分类器必须保证语义定位,建立在现实方法的基础上。基于条件概率和先验概率、错误代价-决策抛掷等,利用知识的通用和强大表示,希望在最可能的情况下有一种判别方法,该分类器由神经网络生成。因此,在有一个二元决策的地方,比如像僵局这样的艰难决策,移动机器人决定了90%的僵局情况
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