模式识别及MATLAB实现——学习与实验指导


模式识别及MATLAB实现——学习与实验指导

文章插图
模式识别及MATLAB实现——学习与实验指导【模式识别及MATLAB实现——学习与实验指导】《模式识别及MATLAB实现——学习与实验指导》是2017年8月01日电子工业出版社出版的图书 , 作者是郭志强 。
基本介绍书名:模式识别及MATLAB实现——学习与实验指导 
作者:郭志强
出版社:电子工业出版社
出版时间:2017年8月01日 
内容简介《模式识别及MATLAB实现——学习与实验指导》是《模式识别及Matlab实现》主教材的配套实验与指导 , 根据主教材各章内容 , 相应给出了实验的具体步骤和程式代码 , 包括:贝叶斯决策 , 机率密度函式的参数估计 , 非参数判别分类方法 , 聚类分析 , 特徵提取与选择 , 模糊模式识别 , 神经网路在模式识别中的套用 , 模式识别的工程套用等 。目录第 1 章贝叶斯决策 ·························································································· 11.1 知识要点 ····························································································· 11.2 实验指导 ····························································································· 71.2.1 基于最小错误率的贝叶斯决策 ························································· 71.2.2 最小风险判决规则 ······································································· 121.2.3 最大似然比判决规则 ···································································· 161.2.4 Neyman-Pearsen 判决 ···································································· 21第2 章参数估计 ···························································································· 252.1 知识要点 ···························································································· 252.2 实验指导 ···························································································· 302.2.1 最大似然估计 ············································································· 302.2.2 贝叶斯估计 ················································································ 332.2.3 Parzen 窗 ··················································································· 362.2.4 N k 近邻估计法 ············································································ 38第3 章非参数判别分类法 ················································································ 413.1 知识要点 ···························································································· 413.2 实验指导 ···························································································· 443.2.1 两分法 ······················································································ 443.2.2 两分法的设计 ············································································· 473.2.3 没有不确定区域的两分法 ······························································ 523.2.4 广义线性判别函式的设计与实现 ····················································· 563.2.5 感知器算法的设计/实现 ································································ 583.2.6 两类问题Fisher 準则 ···································································· 623.2.7 基于距离的分段线性判别函式 ························································ 683.2.8 支持向量机 ················································································ 74第4 章聚类分析法 ························································································· 80 4.1 知识要点 ··························································································· 814.2 实验指导 ··························································································· 844.2.1 距离测度 ··················································································· 844.2.2 相似测度算法 ············································································· 904.2.3 基于匹配测度算法的实现 ······························································ 984.2.4 基于类间距离测度方法 ································································ 1034.2.5 聚类函式準则 ············································································ 1064.2.6 基于最近邻规则的聚类算法 ·························································· 1084.2.7 基于最大最小距离聚类算法的实现 ················································· 1134.2.8 基于K-均值聚类算法实验 ···························································· 116第5 章特徵提取与选择 ·················································································· 1245.1 知识要点 ·························································································· 1245.2 实验指导 ·························································································· 1285.2.1 基于距离的可分性判据 ································································ 1285.2.2 图像的傅立叶变换二(旋转性质) ················································· 130 5.2.3 基于熵函式的可分性判据 ····························································· 1345.2.4 利用类均值向量提取特徵 ····························································· 1365.2.5 基于类平均向量中判别信息的最优压缩的实现 ·································· 1415.2.6 增添特徵法 ··············································································· 1445.2.7 剔减特徵法 ··············································································· 1485.2.8 增l 减r(算法)的设计/实现 ························································ 1515.2.9 分支定界法(BAB 算法) ···························································· 156第6 章模糊模式识别 ····················································································· 1616.1 知识要点 ·························································································· 1616.2 实验指导 ·························································································· 1636.2.1 最大隶属度识别法 ······································································ 1636.2.2 择近原则识别法 ········································································· 1676.2.3 基于模糊等价关係的聚类算法研究 ················································· 170第7 章数字图像处理的基础 ··········································································· 1797.1 知识要点 ·························································································· 179 7.2 实验指导 ·························································································· 1817.2.1 前馈神经网路感知器的设计实现 ··················································· 1817.2.2 基于BP 网路的多层感知器 ·························································· 1847.2.3 自组织特徵映射网路的设计/实现 ·················································· 1897.2.4 径向基神经网路 ········································································ 194参考文献 ······································································································· 198