| Preface |
|
xi | |
| Authors |
|
xv | |
|
1. Fuzzy Subsets and Operations |
|
|
1 | |
|
|
|
1 | |
|
1.2 Concept of Fuzzy Subsets and Membership Function |
|
|
1 | |
|
1.2.1 Membership Function |
|
|
2 | |
|
|
|
10 | |
|
1.4 Operations on Fuzzy Sets |
|
|
11 | |
|
|
|
14 | |
|
1.5.1 Composition of Two Fuzzy Relations |
|
|
16 | |
|
1.5.2 Fuzzy Binary Relation |
|
|
17 | |
|
1.5.3 Transitive Closure of Fuzzy Binary Relation |
|
|
18 | |
|
|
|
19 | |
|
|
|
20 | |
|
2. Image Processing in an Imprecise Environment |
|
|
21 | |
|
|
|
21 | |
|
|
|
23 | |
|
2.3 Fuzzy Image Processing |
|
|
24 | |
|
2.3.1 Foundations of Image Processing |
|
|
24 | |
|
|
|
24 | |
|
2.3.1.2 Measures of Fuzziness/Information |
|
|
24 | |
|
2.3.1.3 Rule-Based Systems |
|
|
25 | |
|
|
|
25 | |
|
2.3.1.5 Fuzzy Mathematical Morphology |
|
|
25 | |
|
|
|
26 | |
|
2.4 Some Applications of Fuzzy Set Theory in Image Processing |
|
|
26 | |
|
|
|
28 | |
|
|
|
28 | |
|
3. Fuzzy Similarity Measure, Measure of Fuzziness, and Entropy |
|
|
31 | |
|
|
|
31 | |
|
3.2 Fuzzy Similarity and Distance Measures |
|
|
32 | |
|
3.2.1 Examples of Fuzzy Distance Measures |
|
|
33 | |
|
|
|
33 | |
|
3.3 Examples of Similarity Measures |
|
|
35 | |
|
3.3.1 Measure Based on Tversky's Model |
|
|
35 | |
|
3.3.2 Similarity of Fuzzy Sets Based on Distance |
|
|
37 | |
|
3.4 Measures of Fuzziness |
|
|
37 | |
|
|
|
38 | |
|
3.4.2 Index of Nonfuzziness |
|
|
39 | |
|
|
|
39 | |
|
|
|
40 | |
|
3.5.1 Logarithmic Entropy |
|
|
40 | |
|
3.5.2 Shannon Fuzzy Entropy |
|
|
40 | |
|
|
|
40 | |
|
|
|
42 | |
|
3.6 Geometry of Fuzzy Subsets |
|
|
43 | |
|
|
|
43 | |
|
|
|
44 | |
|
4. Fuzzy Image Preprocessing |
|
|
45 | |
|
|
|
45 | |
|
|
|
47 | |
|
4.3 Fuzzy Image Contrast Enhancement |
|
|
47 | |
|
4.3.1 Contrast Improvement Using an Intensification Operator |
|
|
49 | |
|
4.3.2 Contrast Improvement Using Fuzzy Histogram Hyperbolization |
|
|
52 | |
|
4.3.3 Contrast Enhancement Using Fuzzy IF-THEN Rules |
|
|
53 | |
|
4.3.4 Contrast Improvement Using a Fuzzy Expected Value |
|
|
54 | |
|
4.3.5 Locally Adaptive Contrast Enhancement |
|
|
55 | |
|
|
|
56 | |
|
|
|
58 | |
|
|
|
63 | |
|
|
|
63 | |
|
5. Thresholding Detection in Fuzzy Images |
|
|
67 | |
|
|
|
67 | |
|
5.2 Threshold Detection Methods |
|
|
68 | |
|
5.3 Types of Thresholding |
|
|
69 | |
|
5.3.1 Global Thresholding |
|
|
69 | |
|
5.3.2 Locally Adaptive Thresholding |
|
|
70 | |
|
5.3.3 Iterative Thresholding |
|
|
71 | |
|
5.3.4 Optimal Thresholding |
|
|
71 | |
|
5.3.5 Multispectral Thresholding |
|
|
72 | |
|
|
|
72 | |
|
5.5 Types of Fuzzy Methods |
|
|
74 | |
|
5.5.1 Gamma Membership Function |
|
|
79 | |
|
|
|
80 | |
|
5.5.1.2 Index of Fuzziness |
|
|
82 | |
|
5.5.1.3 Fuzzy Similarity Measure |
|
|
83 | |
|
5.6 Application of Thresholding |
|
|
87 | |
|
|
|
89 | |
|
|
|
91 | |
|
6. Fuzzy Match-Based Region Extraction |
|
|
93 | |
|
6.1 Match-Based Region Extraction |
|
|
93 | |
|
6.2 Back Projection Algorithm |
|
|
95 | |
|
6.2.1 Swain and Ballard's Back Projection Algorithm |
|
|
95 | |
|
6.2.2 Quadratic Confidence Back Projection |
|
|
96 | |
|
6.2.3 Local Histogranuning |
|
|
97 | |
|
6.2.4 Binary Set Back Projection |
|
|
97 | |
|
6.2.5 Single Element Quadratic Back Projection |
|
|
97 | |
|
6.3 Fuzzy Region Extraction Methods |
|
|
98 | |
|
6.3.1 Fuzzy Similarity Measures |
|
|
98 | |
|
6.3.2 Fuzzy Measures in Region Extraction |
|
|
100 | |
|
|
|
107 | |
|
|
|
107 | |
|
|
|
109 | |
|
|
|
109 | |
|
7.2 Methods for Edge Detection |
|
|
109 | |
|
7.2.1 Thresholding-Based Methods |
|
|
110 | |
|
|
|
111 | |
|
7.2.3 Hough Transform Method |
|
|
111 | |
|
|
|
111 | |
|
7.3.1 Fuzzy Sobel Edge Detector |
|
|
112 | |
|
7.3.2 Entropy-Based Fuzzy Edge Detection |
|
|
113 | |
|
7.3.3 Fuzzy Template Based Edge Detector |
|
|
116 | |
|
|
|
122 | |
|
|
|
123 | |
|
8. Fuzzy Content-Based Image Retrieval |
|
|
125 | |
|
|
|
125 | |
|
|
|
126 | |
|
8.3 Content-Based Color Image Retrieval |
|
|
128 | |
|
8.3.1 Global-Based Approach |
|
|
128 | |
|
8.3.2 Partition-Based Approach |
|
|
129 | |
|
8.3.3 Regional-Based Approach |
|
|
130 | |
|
8.4 Image Retrieval Model |
|
|
130 | |
|
8.5 Fuzzy-Based Image Retrieval Methods |
|
|
131 | |
|
8.5.1 Fuzzy SimilarityBased Retrieval Model |
|
|
132 | |
|
8.5.2 Color Histogram-Based Retrieval |
|
|
134 | |
|
8.5.3 Smoothed Histogram-Based Retrieval |
|
|
134 | |
|
8.5.4 Fuzzy Similarity/Tversky's Measure-Based Retrieval Method |
|
|
136 | |
|
8.5.4.1 Fuzzy Similarity Measures |
|
|
137 | |
|
|
|
142 | |
|
|
|
142 | |
|
9. Fuzzy Methods in Pattern Classification |
|
|
145 | |
|
|
|
145 | |
|
9.2 Decision Theoretic Pattern Classification Techniques |
|
|
146 | |
|
9.2.1 Preliminaries of Unsupervised Classification |
|
|
148 | |
|
9.3 Why a Fuzzy Classifier |
|
|
151 | |
|
9.3.1 Limitations of Statistical Classifiers |
|
|
151 | |
|
9.4 Fuzzy Set Theoretic Approach to Pattern Classification |
|
|
152 | |
|
9.5 Fuzzy Supervised Learning Algorithm |
|
|
153 | |
|
|
|
155 | |
|
9.6.1 Pattern Classification Using a Fuzzy Similarity Measure |
|
|
156 | |
|
9.6.2 Fuzzy Similitude and Partitioning |
|
|
156 | |
|
9.7 Fuzzy Unsupervised Pattern Classification |
|
|
161 | |
|
|
|
163 | |
|
|
|
163 | |
| 10. Application of Fuzzy Set Theory in Remote Sensing |
|
165 | |
|
|
|
165 | |
|
10.2 Why Fuzzy Techniques in Remote Sensing |
|
|
165 | |
|
10.3 About the Remotely Sensed Data |
|
|
166 | |
|
10.4 Classification of Remotely Sensed Data |
|
|
167 | |
|
10.5 Fuzzy Sets in Remote Sensing Data Analysis |
|
|
168 | |
|
10.6 Background Work in Neuro Fuzzy Computing in Remote Sensing |
|
|
169 | |
|
10.7 Background Work on Fuzzy Sets in Remote Sensing |
|
|
172 | |
|
10.8 Segmentation of Remote Sensing Images |
|
|
173 | |
|
10.9 Fuzzy Multilayer Perception |
|
|
175 | |
|
10.9.1 Fusion of Fuzzy Logic with Neural Networks |
|
|
176 | |
|
10.9.2 Fuzzy MLP with Back-Propagation Learning |
|
|
176 | |
|
10.9.3 Fuzzy Back-Propagation Classifier Architecture |
|
|
177 | |
|
10.10 Fuzzy Counter-Propagation Network |
|
|
178 | |
|
10.11 Fuzzy CPN for Classification of Remotely Sensed Data |
|
|
179 | |
|
10.11.1 General Description of the Test Scenes |
|
|
179 | |
|
10.11.2 Experimental Results |
|
|
181 | |
|
|
|
182 | |
|
|
|
183 | |
| 11. MATLAB® Programs |
|
185 | |
|
|
|
185 | |
|
|
|
187 | |
| Problems |
|
201 | |
| Index |
|
207 | |