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Introduction and background |
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1 | (7) |
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2 | (1) |
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Active contours for visual tracking |
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3 | (5) |
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4 | (1) |
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Dynamical models using auto-regressive processes |
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5 | (1) |
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6 | (2) |
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The Condensation algorithm |
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8 | (30) |
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8 | (3) |
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11 | (5) |
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Technical detail: convergence of distribution-valued distributions |
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14 | (1) |
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The crucial definition: how a particle set represents a distribution |
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15 | (1) |
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Operations on particle sets |
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16 | (8) |
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Multiplication by a function |
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17 | (1) |
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18 | (2) |
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20 | (4) |
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24 | (1) |
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The relation to factored sampling, or ``where did the proof go?'' |
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25 | (1) |
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``Good'' particle sets and the effective sample size |
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26 | (9) |
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28 | (3) |
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From effective sample size to survival diagnostic |
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31 | (2) |
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Estimating the weight normalisation |
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33 | (1) |
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Effective sample size of a resampled set |
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33 | (2) |
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A brief history of Condensation |
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35 | (2) |
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Some alternatives to Condensation |
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37 | (1) |
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38 | (27) |
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A generative model for image features |
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38 | (16) |
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The generic contour likelihood |
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42 | (3) |
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45 | (1) |
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The interior-exterior likelihood |
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46 | (3) |
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The order statistic likelihood |
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49 | (1) |
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The contour likelihood ratio |
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50 | (1) |
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51 | (3) |
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Background models and the selection of measurement lines |
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54 | (6) |
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Discussion of the background model |
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55 | (1) |
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Independence of measurement lines |
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55 | (2) |
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Selection of measurement lines |
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57 | (3) |
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A continuous analogue of the contour likelihood ratio |
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60 | (5) |
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60 | (2) |
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Likelihoods for Ho and HB |
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62 | (1) |
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Problems with the continuous ARP model |
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63 | (2) |
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Object localisation and tracking with contour likelihoods |
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65 | (27) |
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A brief survey of object localisation |
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65 | (3) |
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Object localisation by factored sampling |
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68 | (7) |
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70 | (3) |
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Interpretation of the gradient threshold |
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73 | (2) |
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Estimating the number of targets |
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75 | (4) |
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79 | (1) |
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Random sampling: some traps for the unwary |
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80 | (4) |
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Tracker initialisation by factored sampling |
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84 | (2) |
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85 | (1) |
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85 | (1) |
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Tracking using Condensation and the contour likelihoods |
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86 | (6) |
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The robustified colour contour likelihood |
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86 | (3) |
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Implementation of a head tracker |
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89 | (3) |
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Modelling occlusions using the Markov likelihood |
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92 | (20) |
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Detecting occluded objects |
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92 | (2) |
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The problem with the independence assumption |
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94 | (1) |
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The Markov generative model |
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95 | (1) |
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96 | (3) |
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Realistic assessment of multiple targets |
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99 | (3) |
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99 | (1) |
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100 | (2) |
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Improved discrimination with a single target |
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102 | (1) |
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Faster convergence using importance sampling |
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103 | (4) |
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Random samples using MCMC |
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107 | (2) |
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Calculating the partition functions |
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109 | (1) |
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110 | (2) |
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A probabilistic exclusion principle for multiple objects |
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112 | (12) |
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112 | (2) |
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A generative model with an exclusion principle |
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114 | (4) |
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Description of the generative model |
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114 | (1) |
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Likelihoods derived from the generative model |
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115 | (1) |
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Where does the ``exclusion principle'' come from? |
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116 | (2) |
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118 | (1) |
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Tracking multiple wire-frame objects |
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118 | (1) |
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Tracking multiple opaque objects |
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119 | (5) |
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124 | (20) |
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The need for partitioned sampling |
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124 | (3) |
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127 | (3) |
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Basic partitioned sampling |
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130 | (1) |
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Branched partitioned sampling |
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131 | (2) |
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Performance of partitioned sampling |
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133 | (1) |
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Partitioned sampling for articulated objects |
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134 | (10) |
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Results: a vision-based drawing package |
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138 | (6) |
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144 | (2) |
Appendix A |
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146 | (7) |
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A.1 Measures and metrics on the configuration space |
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146 | (1) |
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A.2 Proof of the interior-exterior likelihood |
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147 | (2) |
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A.3 Del Moral's resampling lemma and its consequences |
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149 | (4) |
Appendix B |
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153 | (2) |
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153 | (2) |
Bibliography |
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155 | (10) |
Index |
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165 | |