《模式識別及MATLAB實現——學習與實驗指導》是2017年8月01日電子工業出版社出版的圖書,作者是郭志強。
基本介紹
- 書名:模式識別及MATLAB實現——學習與實驗指導
- 作者:郭志強
- 出版社:電子工業出版社
- 出版時間:2017年8月01日
內容簡介,目錄,
內容簡介
《模式識別及MATLAB實現——學習與實驗指導》是《模式識別及Matlab實現》主教材的配套實驗與指導,根據主教材各章內容,相應給出了實驗的具體步驟和程式代碼,包括:貝葉斯決策,機率密度函式的參數估計,非參數判別分類方法,聚類分析,特徵提取與選擇,模糊模式識別,神經網路在模式識別中的套用,模式識別的工程套用等。
目錄
第 1 章貝葉斯決策 ·························································································· 1
1.1 知識要點 ····························································································· 1
1.2 實驗指導 ····························································································· 7
1.2.1 基於最小錯誤率的貝葉斯決策 ························································· 7
1.2.2 最小風險判決規則 ······································································· 12
1.2.3 最大似然比判決規則 ···································································· 16
1.2.4 Neyman-Pearsen 判決 ···································································· 21
第2 章參數估計 ···························································································· 25
2.1 知識要點 ···························································································· 25
2.2 實驗指導 ···························································································· 30
2.2.1 最大似然估計 ············································································· 30
2.2.2 貝葉斯估計 ················································································ 33
2.2.3 Parzen 窗 ··················································································· 36
2.2.4 N k 近鄰估計法 ············································································ 38
第3 章非參數判別分類法 ················································································ 41
3.1 知識要點 ···························································································· 41
3.2 實驗指導 ···························································································· 44
3.2.1 兩分法 ······················································································ 44
3.2.2 兩分法的設計 ············································································· 47
3.2.3 沒有不確定區域的兩分法 ······························································ 52
3.2.4 廣義線性判別函式的設計與實現 ····················································· 56
3.2.5 感知器算法的設計/實現 ································································ 58
3.2.6 兩類問題Fisher 準則 ···································································· 62
3.2.7 基於距離的分段線性判別函式 ························································ 68
3.2.8 支持向量機 ················································································ 74
第4 章聚類分析法 ························································································· 80
4.1 知識要點 ··························································································· 81
4.2 實驗指導 ··························································································· 84
4.2.1 距離測度 ··················································································· 84
4.2.2 相似測度算法 ············································································· 90
4.2.3 基於匹配測度算法的實現 ······························································ 98
4.2.4 基於類間距離測度方法 ································································ 103
4.2.5 聚類函式準則 ············································································ 106
4.2.6 基於最近鄰規則的聚類算法 ·························································· 108
4.2.7 基於最大最小距離聚類算法的實現 ················································· 113
4.2.8 基於K-均值聚類算法實驗 ···························································· 116
第5 章特徵提取與選擇 ·················································································· 124
5.1 知識要點 ·························································································· 124
5.2 實驗指導 ·························································································· 128
5.2.1 基於距離的可分性判據 ································································ 128
5.2.2 圖像的傅立葉變換二(旋轉性質) ················································· 130
5.2.3 基於熵函式的可分性判據 ····························································· 134
5.2.4 利用類均值向量提取特徵 ····························································· 136
5.2.5 基於類平均向量中判別信息的最優壓縮的實現 ·································· 141
5.2.6 增添特徵法 ··············································································· 144
5.2.7 剔減特徵法 ··············································································· 148
5.2.8 增l 減r(算法)的設計/實現 ························································ 151
5.2.9 分支定界法(BAB 算法) ···························································· 156
第6 章模糊模式識別 ····················································································· 161
6.1 知識要點 ·························································································· 161
6.2 實驗指導 ·························································································· 163
6.2.1 最大隸屬度識別法 ······································································ 163
6.2.2 擇近原則識別法 ········································································· 167
6.2.3 基於模糊等價關係的聚類算法研究 ················································· 170
第7 章數字圖像處理的基礎 ··········································································· 179
7.1 知識要點 ·························································································· 179
7.2 實驗指導 ·························································································· 181
7.2.1 前饋神經網路感知器的設計實現 ··················································· 181
7.2.2 基於BP 網路的多層感知器 ·························································· 184
7.2.3 自組織特徵映射網路的設計/實現 ·················································· 189
7.2.4 徑向基神經網路 ········································································ 194
參考文獻 ······································································································· 198