深度學習:原理與應用實踐

深度學習:原理與應用實踐

作者: 張重生
出版社: 電子工業
出版在: 2016-12-01
ISBN-13: 9787121304132
ISBN-10: 7121304139
裝訂格式: 平裝
總頁數: 220 頁





內容描述


本書全面、系統地介紹深度學習相關的技術,包括人工神經網絡,捲積神經網絡,深度學習平臺及源代碼分析,深度學習入門與進階,深度學習高級實踐,所有章節均附有源程序,所有實驗讀者均可重現,具有高度的可操作性和實用性。通過學習本書,研究人員、深度學習愛好者,能夠在3 個月內,系統掌握深度學習相關的理論和技術。


目錄大綱


深度學習基礎篇
第1章緒論········································· ·················································· ······· 2
1.1引言········································ ·················································· ············· 2
1.1.1 Google的深度學習成果···························· ································ 2
1.1.2 Microsoft的深度學習成果········· ················································ 3
1.1 .3國內公司的深度學習成果·········································· ··············· 3
1.2深度學習技術的發展歷程··························· ········································· 4
1.3深度學習的應用領域·· ·················································· ························ 6
1.3.1圖像識別領域··················· ·················································· ········ 6
1.3.2語音識別領域··································· ·········································· 6
1.3.3自然語言理解領域·················································· ··················· 7
1.4如何開展深度學習的研究和應用開發···················· ····························· 7
本章參考文獻················· ·················································· ··························· 11
第2章國內外深度學習技術研發現狀及其產業化趨勢······· ························ 13
2.1 Google在深度學習領域的研發現狀················ ·································· 13
2.1.1深度學習在Google的應用······ ················································ 13
2.1 .2 Google的TensorFlow深度學習平臺······································ 14
2.1.3 Google的深度學習芯片TPU ············································ ······ 15
2.2 Facebook在深度學習領域的研發現狀·································· ············ 15
2.2.1 Torchnet ································· ·················································· · 15
2.2.2 DeepText ············································ ······································· 16
2.3百度在深度學習領域的研發現狀· ·················································· ···· 17
2.3.1光學字符識別······································· ···································· 17
2.3.2商品圖像搜索······· ·················································· ·················· 17
2.3.3在線廣告·························· ·················································· ······ 18
2.3.4以圖搜圖···································· ·············································· 18
2.3.5語音識別················································ ·································· 18
2.3.6百度開源深度學習平臺MXNet及其改進的深度語音識別系統Warp-CTC ····· 19
2.4阿裡巴巴在深度學習領域的研發現狀····························· ·················· 19
2.4.1拍立淘························· ·················································· ··········· 19
2.4.2阿裡小蜜——智能客服Messenger ··························· ·············· 20
2.5京東在深度學習領域的研發現狀·························· ····························· 20
2.6騰訊在深度學習領域的研發現狀··········· ············································ 21
2.7科創型公司(基於深度學習的人臉識別系統) ······························· 22
2.8深度學習的硬件支撐—— NVIDIA GPU ············································ 23
本章參考文獻·················································· ············································ 24
深度學習理論篇
第3章神經網絡·············································· ··········································· 30
3.1神經元的概念· ·················································· ··································· 30
3.2神經網絡··········· ·················································· ································ 31
3.2.1後向傳播算法·········· ·················································· ··············· 32
3.2.2後向傳播算法推導·························· ········································· 33
3.3神經網絡算法示例··· ·················································· ························· 36
本章參考文獻····················· ·················································· ······················· 38
第4章捲積神經網絡··················· ·················································· ············ 39
4.1捲積神經網絡特性······························· ················································· 39
4.1.1局部連接············································· ····································· 40
4.1.2權值共享······ ·················································· ·························· 41
4.1.3空間相關下採樣················ ·················································· ····· 42
4.2捲積神經網絡操作······································ ········································ 42
4.2.1捲積操作··· ·················································· ····························· 42
4.2.2下採樣操作·············· ·················································· ·············· 44
4.3捲積神經網絡示例:LeNet-5 ························· ···································· 45
本章參考文獻·········· ·················································· ·································· 48
深度學習工具篇
第5章深度學習工具Caffe ···· ·················································· ·················· 50
5.1 Caffe的安裝··························· ·················································· ··········· 50
5.1.1安裝依賴包································ ·············································· 51
5.1.2 CUDA安裝················································ ······························ 51
5.1.3 MATLAB和Python安裝············ ············································ 54
5.1.4 OpenCV安裝(可選) ·············································· ·············· 59
5.1.5 Intel MKL或者BLAS安裝··························· ·························· 59
5.1.6 Caffe編譯和測試················ ·················································· ··· 59
5.1.7 Caffe安裝問題分析······································· ·························· 62
5.2 Caffe框架與源代碼解析················ ·················································· ·· 63
5.2.1數據層解析········································· ····································· 63
5.2.2網絡層解析······ ·················································· ······················ 74
5.2.3網絡結構解析····················· ·················································· ···· 92
5.2.4網絡求解解析······································· ·································· 104
本章參考文獻············ ·················································· ······························ 109
第6章深度學習工具Pylearn2 ············ ·················································· ·· 110
6.1 Pylearn2的安裝··········································· ······································· 110
6.1.1相關依賴安裝···· ·················································· ···················· 110
6.1.2安裝Pylearn2 ························ ·················································· 112
6.2 Pylearn2的使用············································· ····································· 112
本章參考文獻········· ·················································· ·································· 116
深度學習實踐篇(入門與進階)
第7章基於深度學習的手寫數字識別············································· ········· 118
7.1數據介紹····································· ·················································· ····· 118
7.1.1 MNIST數據集······································ ·································· 118
7.1.2提取MNIST數據集圖片······· ················································ 120
7.2手寫字體識別流程·············································· ······························ 121
7.2.1模型介紹·············· ·················································· ················ 121
7.2.2操作流程···························· ·················································· ·· 126
7.3實驗結果分析··········································· ········································· 127
本章參考文獻····· ·················································· ····································· 128
第8章基於深度學習的圖像識別··· ·················································· ········ 129
8.1數據來源······································ ·················································· ··· 129
8.1.1 Cifar10數據集介紹······································· ························· 129
8.1.2 Cifar10數據集格式················· ··············································· 129
8.2 Cifar10識別流程················································ ······························· 130
8.2.1模型介紹············· ·················································· ················· 130
8.2.2操作流程··························· ·················································· ··· 136
8.3實驗結果分析·········································· ············································ 139
本章參考文獻·· ·················································· ········································ 140
第9章基於深度學習的物體圖像識別················································· ····· 141
9.1數據來源········································· ·················································· 141
9.1.1 Caltech101數據集··········································· ······················· 141
9.1.2 Caltech101數據集處理··················· ······································· 142
9.2物體圖像識別流程····· ·················································· ····················· 143
9.2.1模型介紹······················· ·················································· ······· 143
9.2.2操作流程····································· ··········································· 144
9.3實驗結果分析·· ·················································· ··········




相關書籍

The Top Ten Algorithms in Data Mining (Hardcover)

作者 Xindong Wu Vipin Kumar

2016-12-01

深度學習與圖像分析 — 基礎與應用

作者 李松斌 劉鵬

2016-12-01

Electronic Circuits with MATLAB, PSpice, and Smith Chart

作者 Won Y. Yang Jaekwon Kim Donghyun Paik Jingon Joung Sungjoon Lim Han L. Lee Woo June Choi Kyung W. Park Suhyun Park Taeho Im

2016-12-01