Details

Information Fusion in Signal and Image Processing


Information Fusion in Signal and Image Processing

Major Probabilistic and Non-Probabilistic Numerical Approaches
1. Aufl.

von: Isabelle Bloch

173,99 €

Verlag: Wiley
Format: EPUB
Veröffentl.: 01.03.2013
ISBN/EAN: 9781118623855
Sprache: englisch
Anzahl Seiten: 320

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Beschreibungen

The area of information fusion has grown considerably during the last few years, leading to a rapid and impressive evolution. In such fast-moving times, it is important to take stock of the changes that have occurred. As such, this books offers an overview of the general principles and specificities of information fusion in signal and image processing, as well as covering the main numerical methods (probabilistic approaches, fuzzy sets and possibility theory and belief functions).
<p>Preface 11<br /> Isabelle BLOCH</p> <p><b>Chapter 1. Definitions 13</b><br /> <i>Isabelle BLOCH and Henri MAÎTRE</i></p> <p>1.1. Introduction 13</p> <p>1.2. Choosing a definition 13</p> <p>1.3. General characteristics of the data 16</p> <p>1.4. Numerical/symbolic 19</p> <p>1.4.1. Data and information 19</p> <p>1.4.2. Processes 19</p> <p>1.4.3. Representations 20</p> <p>1.5. Fusion systems 20</p> <p>1.6. Fusion in signal and image processing and fusion in other fields 22</p> <p>1.7. Bibliography 23</p> <p><b>Chapter 2. Fusion in Signal Processing 25</b><br /> <i>Jean-Pierre LE CADRE, Vincent NIMIER and Roger REYNAUD</i></p> <p>2.1. Introduction 25</p> <p>2.2. Objectives of fusion in signal processing 27</p> <p>2.2.1. Estimation and calculation of a law a posteriori 28</p> <p>2.2.2. Discriminating between several hypotheses and identifying 31</p> <p>2.2.3. Controlling and supervising a data fusion chain 34</p> <p>2.3. Problems and specificities of fusion in signal processing 37</p> <p>2.3.1. Dynamic control 37</p> <p>2.3.2. Quality of the information 42</p> <p>2.3.3. Representativeness and accuracy of learning and a priori information 43</p> <p>2.4. Bibliography 43</p> <p><b>Chapter 3. Fusion in Image Processing 47</b><br /> <i>Isabelle BLOCH and Henri MAÎTRE</i></p> <p>3.1. Objectives of fusion in image processing 47</p> <p>3.2. Fusion situations 50</p> <p>3.3. Data characteristics in image fusion 51</p> <p>3.4. Constraints 54</p> <p>3.5. Numerical and symbolic aspects in image fusion 55</p> <p>3.6. Bibliography 56</p> <p><b>Chapter 4. Fusion in Robotics 57</b><br /> <i>Michèle ROMBAUT</i></p> <p>4.1. The necessity for fusion in robotics 57</p> <p>4.2. Specific features of fusion in robotics 58</p> <p>4.2.1.Constraints on the perception system 58</p> <p>4.2.2. Proprioceptive and exteroceptive sensors 58</p> <p>4.2.3. Interaction with the operator and symbolic interpretation 59</p> <p>4.2.4. Time constraints 59</p> <p>4.3. Characteristics of the data in robotics 61</p> <p>4.3.1. Calibrating and changing the frame of reference 61</p> <p>4.3.2. Types and levels of representation of the environment 62</p> <p>4.4. Data fusion mechanisms 63</p> <p>4.5. Bibliography 64</p> <p><b>Chapter 5. Information and Knowledge Representation in Fusion Problems 65</b><br /> <i>Isabelle BLOCH and Henri MAÎTRE</i></p> <p>5.1. Introduction 65</p> <p>5.2. Processing information in fusion 65</p> <p>5.3. Numerical representations of imperfect knowledge 67</p> <p>5.4. Symbolic representation of imperfect knowledge 68</p> <p>5.5. Knowledge-based systems 69</p> <p>5.6. Reasoning modes and inference 73</p> <p>5.7. Bibliography 74</p> <p><b>Chapter 6. Probabilistic and Statistical Methods 77</b><br /> <i>Isabelle BLOCH, Jean-Pierre LE CADRE and Henri MAÎTRE</i></p> <p>6.1. Introduction and general concepts 77</p> <p>6.2. Information measurements 77</p> <p>6.3. Modeling and estimation 79</p> <p>6.4. Combination in a Bayesian framework 80</p> <p>6.5. Combination as an estimation problem 80</p> <p>6.6. Decision 81</p> <p>6.7. Other methods in detection 81</p> <p>6.8. An example of Bayesian fusion in satellite imagery 82</p> <p>6.9. Probabilistic fusion methods applied to target motion analysis 84</p> <p>6.9.1. General presentation 84</p> <p>6.9.2. Multi-platform target motion analysis 95</p> <p>6.9.3. Target motion analysis by fusion of active and passive measurements 96</p> <p>6.9.4. Detection of a moving target in a network of sensors 98</p> <p>6.10. Discussion 101</p> <p>6.11. Bibliography 104</p> <p><b>Chapter 7. Belief Function Theory 107</b><br /> <i>Isabelle BLOCH</i></p> <p>7.1. General concept and philosophy of the theory 107</p> <p>7.2. Modeling 108</p> <p>7.3. Estimation of mass functions 111</p> <p>7.3.1. Modification of probabilistic models 112</p> <p>7.3.2. Modification of distance models 114</p> <p>7.3.3. A priori information on composite focal elements (disjunctions) 114</p> <p>7.3.4. Learning composite focal elements 115</p> <p>7.3.5. Introducing disjunctions by mathematical morphology 115</p> <p>7.4. Conjunctive combination 116</p> <p>7.4.1. Dempster’s rule 116</p> <p>7.4.2. Conflict and normalization 116</p> <p>7.4.3. Properties 118</p> <p>7.4.4. Discounting 120</p> <p>7.4.5. Conditioning 120</p> <p>7.4.6. Separable mass functions 121</p> <p>7.4.7. Complexity 122</p> <p>7.5. Other combination modes 122</p> <p>7.6. Decision 122</p> <p>7.7. Application example in medical imaging 124</p> <p>7.8. Bibliography 131</p> <p><b>Chapter 8. Fuzzy Sets and Possibility Theory 135</b><br /> <i>Isabelle BLOCH</i></p> <p>8.1. Introduction and general concepts 135</p> <p>8.2. Definitions of the fundamental concepts of fuzzy sets 136</p> <p>8.2.1. Fuzzy sets 136</p> <p>8.2.2. Set operations: Zadeh’s original definitions 137</p> <p>8.2.3. α-cuts 139</p> <p>8.2.4. Cardinality 139</p> <p>8.2.5. Fuzzy number 140</p> <p>8.3. Fuzzy measures 142<br /> <br /> 8.3.1. Fuzzy measure of a crisp set 142</p> <p>8.3.2. Examples of fuzzy measures 142</p> <p>8.3.3. Fuzzy integrals 143</p> <p>8.3.4. Fuzzy set measures 145</p> <p>8.3.5. Measures of fuzziness 145</p> <p>8.4. Elements of possibility theory 147</p> <p>8.4.1. Necessity and possibility 147</p> <p>8.4.2. Possibility distribution 148</p> <p>8.4.3. Semantics 150</p> <p>8.4.4. Similarities with the probabilistic, statistical and belief interpretations 150</p> <p>8.5. Combination operators 151</p> <p>8.5.1. Fuzzy complementation 152</p> <p>8.5.2. Triangular norms and conorms 153</p> <p>8.5.3. Mean operators 161</p> <p>8.5.4. Symmetric sums 165</p> <p>8.5.5. Adaptive operators 167</p> <p>8.6. Linguistic variables 170</p> <p>8.6.1. Definition 171</p> <p>8.6.2. An example of a linguistic variable 171</p> <p>8.6.3. Modifiers 172</p> <p>8.7. Fuzzy and possibilistic logic 172</p> <p>8.7.1. Fuzzy logic 173</p> <p>8.7.2. Possibilistic logic 177</p> <p>8.8. Fuzzy modeling in fusion 179</p> <p>8.9. Defining membership functions or possibility distributions 180</p> <p>8.10. Combining and choosing the operators 182</p> <p>8.11. Decision 187</p> <p>8.12. Application examples 188</p> <p>8.12.1. Example in satellite imagery 188</p> <p>8.12.2. Example in medical imaging 192</p> <p>8.13. Bibliography 194</p> <p><b>Chapter 9. Spatial Information in Fusion Methods 199</b><br /> <i>Isabelle BLOCH</i></p> <p>9.1. Modeling 199</p> <p>9.2. The decision level 200</p> <p>9.3. The combination level 201</p> <p>9.4. Application examples 201</p> <p>9.4.1. The combination level: multi-source Markovian classification 201</p> <p>9.4.2. The modeling and decision level: fusion of structure detectors using belief function theory 202</p> <p>9.4.3. The modeling level: fuzzy fusion of spatial relations 205</p> <p>9.5. Bibliography 211</p> <p><b>Chapter 10. Multi-Agent Methods: An Example of an Architecture and its Application for the Detection, Recognition and Identification of Targets 213</b><br /> <i>Fabienne EALET, Bertrand COLLIN and Catherine GARBAY</i></p> <p>10.1.The DRI function 214</p> <p>10.1.1. The application context 215</p> <p>10.1.2. Design constraints and concepts 216</p> <p>10.1.3. State of the art 216</p> <p>10.2. Proposed method: towards a vision system 217</p> <p>10.2.1. Representation space and situated agents 218</p> <p>10.2.2. Focusing and adapting 219</p> <p>10.2.3. Distribution and co-operation 220</p> <p>10.2.4. Decision and uncertainty management 221</p> <p>10.2.5. Incrementality and learning 221</p> <p>10.3. The multi-agent system: platform and architecture 222</p> <p>10.3.1. The developed multi-agent architecture 222</p> <p>10.3.2. Presentation of the platformused 222</p> <p>10.4. The control scheme 224</p> <p>10.4.1. The intra-image control cycle 224</p> <p>10.4.2. Inter-image control cycle 226</p> <p>10.5. The information handled by the agents 227</p> <p>10.5.1. The knowledge base 227</p> <p>10.5.2. The world model 229</p> <p>10.6. The results 231</p> <p>10.6.1. Direct analysis 232</p> <p>10.6.2. Indirect analysis: two focusing strategies 235</p> <p>10.6.3. Indirect analysis: spatial and temporal exploration 237</p> <p>10.6.4. Conclusion 240</p> <p>10.7. Bibliography 241</p> <p><b>Chapter 11. Fusion of Non-Simultaneous Elements of Information: Temporal Fusion 245</b><br /> <i>Michèle ROMBAUT</i></p> <p>11.1. Time variable observations 245</p> <p>11.2. Temporal constraints 246</p> <p>11.3. Fusion 247</p> <p>11.3.1. Fusion of distinct sources 247</p> <p>11.3.2. Fusion of single source data 248</p> <p>11.3.3. Temporal registration 249</p> <p>11.4. Dating measurements 249</p> <p>11.5. Evolutionary models 250</p> <p>11.6. Single sensor prediction-combination 252</p> <p>11.7. Multi-sensor prediction-combination 253</p> <p>11.8. Conclusion 257</p> <p>11.9. Bibliography 257</p> <p><b>Chapter 12. Conclusion 259</b><br /> <i>Isabelle BLOCH</i></p> <p>12.1. A few achievements 259</p> <p>12.2. A few prospects 260</p> <p>12.3. Bibliography 261</p> <p><b>Appendices 263</b></p> <p><b>A. Probabilities: A Historical Perspective 263</b></p> <p>A.1. Probabilities through history 264</p> <p>A.1.1. Before 1660 264</p> <p>A.1.2. Towards the Bayesian mathematical formulation 266</p> <p>A.1.3. The predominance of the frequentist approach: the “objectivists” 268</p> <p>A.1.4. The 20th century: a return to subjectivism 269</p> <p>A.2. Objectivist and subjectivist probability classes 271</p> <p>A.3. Fundamental postulates for an inductive logic 272</p> <p>A.3.1. Fundamental postulates 273</p> <p>A.3.2. First functional equation 274</p> <p>A.3.3. Second functional equation 275</p> <p>A.3.4. Probabilities inferred from functional equations 276</p> <p>A.3.5. Measure of uncertainty and information theory 276</p> <p>A.3.6. De Finetti and betting theory 277</p> <p>A.4.Bibliography 280</p> <p><b>B. Axiomatic Inference of the Dempster-Shafer Combination Rule 283</b></p> <p>B.1. Smets’s axioms 284</p> <p>B.2. Inference of the combination rule 286</p> <p>B.3.RelationwithCox’s postulates 287</p> <p>B.4.Bibliography 289</p> <p><i>List of Authors 291</i></p> <p><i>Index 293</i></p>
<b>Isabelle Bloch</b> is Professor at the Ecole Nationale Supérieure des<br /> Télécommunications, Paris, France.
The area of information fusion has grown considerably during the last few years, leading to a rapid and impressive evolution. In such fast-moving times, it is important to take stock of the changes that have occurred. As such, this books offers an overview of the general principles and specificities of information fusion in signal and image processing, as well as covering the main numerical methods (probabilistic approaches, fuzzy sets and possibility theory and belief functions).

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