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xi | |
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xvii | |
Preface |
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xix | |
Acknowledgments |
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xxi | |
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1 | (14) |
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1 | (2) |
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3 | (3) |
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6 | (1) |
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6 | (1) |
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6 | (1) |
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7 | (1) |
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7 | (1) |
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7 | (1) |
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7 | (4) |
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Video Representation for Scripted Content |
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8 | (1) |
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Video Representation for Unscripted Content |
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9 | (2) |
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Video Browsing and Retrieval |
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11 | (1) |
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Video Browsing Using ToC-Based Summary |
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11 | (1) |
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Video Browsing Using Highlights-Based Summary |
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11 | (1) |
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12 | (1) |
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12 | (3) |
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Video Table-of-Content Generation |
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15 | (24) |
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15 | (2) |
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17 | (3) |
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Shot- and Key Frame-Based Video ToC |
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17 | (1) |
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18 | (1) |
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19 | (1) |
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20 | (10) |
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Shot Boundary Detection and Key Frame Extraction |
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20 | (1) |
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Spatiotemporal Feature Extraction |
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20 | (1) |
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21 | (3) |
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Scene Structure Construction |
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24 | (6) |
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Determination of the Parameters |
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30 | (3) |
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30 | (1) |
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31 | (1) |
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Determining groupThreshold and sceneThreshold |
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32 | (1) |
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33 | (4) |
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37 | (2) |
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Highlights Extraction from Unscripted Video |
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39 | (58) |
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39 | (3) |
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39 | (1) |
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39 | (2) |
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Audio-Visual Marker Association and Finer-Resolution Highlights |
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41 | (1) |
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42 | (10) |
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Estimating the Number of Mixtures in GMMs |
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42 | (2) |
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Evaluation Using the Precision-Recall Curve |
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44 | (2) |
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46 | (1) |
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Experimental Results on Golf Highlights Generation |
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47 | (5) |
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52 | (19) |
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52 | (1) |
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52 | (8) |
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Robust Real-Time Object Detection Algorithm |
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60 | (2) |
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Results of Baseball Catcher Detection |
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62 | (2) |
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Results of Soccer Goalpost Detection |
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64 | (4) |
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Results of Golfer Detection |
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68 | (3) |
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Finer-Resolution Highlights Extraction |
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71 | (25) |
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Audio-Visual Marker Association |
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71 | (1) |
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Finer-Resolution Highlights Classification |
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71 | (1) |
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72 | (1) |
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Method 2: Color/Motion Modeling Using HMMs |
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73 | (9) |
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Method 3: Audio-Visual Modeling Using CHMMs |
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82 | (3) |
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Experimental Results with DCHMM |
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85 | (11) |
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96 | (1) |
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Video Structure Discovery Using Unsupervised Learning |
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97 | (102) |
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Motivation and Related Work |
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97 | (1) |
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Proposed Inlinear/Outlier-Based Representation for ``Unscripted'' Multimedia Using Audio Analysis |
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98 | (3) |
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Feature Extraction and the Audio Classification Framework |
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101 | (10) |
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102 | (1) |
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Mel Frequency Cepstral Coefficients (MFCC) |
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102 | (1) |
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Modified Discrete Cosine Transform (MDCT) Features from AC-3 Stream |
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103 | (6) |
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Audio Classification Framework |
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109 | (2) |
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Proposed Time Series Analysis Framework |
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111 | (30) |
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112 | (1) |
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Kernel/Affinity Matrix Computation |
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113 | (1) |
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Segmentation Using Eigenvector Analysis of Affinity Matrices |
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114 | (3) |
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Past Work on Detecting ``Surprising'' Patterns from Time Series |
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117 | (2) |
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Proposed Outlier Subsequence Detection in Times Series |
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119 | (2) |
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Generative Model for Synthetic Time Series |
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121 | (1) |
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Performance of the Normalized Cut for Case 2 |
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122 | (5) |
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Comparison with Other Clustering Approaches for Case 2 |
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127 | (8) |
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Performance of Normalized Cut for Case 3 |
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135 | (6) |
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Ranking Outliers for Summarization |
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141 | (13) |
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Kernel Density Estimation |
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141 | (1) |
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Confidence Measure for Outliers with Binomial and Multinomial PDF Models for the Contexts |
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142 | (7) |
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Confidence Measure for Outliers with GMM and HMM Models for the Contexts |
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149 | (4) |
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Using Confidence Measures to Rank Outliers |
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153 | (1) |
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Application to Consumer Video Browsing |
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154 | (25) |
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Highlights Extraction from Sports Video |
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154 | (17) |
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Scene Segmentation for Situation Comedy Videos |
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171 | (8) |
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Systematic Acquisition of Key Audio Classes |
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179 | (13) |
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Application to Sports Highlights Extraction |
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179 | (6) |
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Event Detection in Elevator Surveillance Audio |
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185 | (7) |
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Possibilities for Future Research |
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192 | (7) |
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199 | (22) |
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199 | (1) |
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199 | (1) |
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199 | (1) |
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Indexing with Low-Level Features: Motion |
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200 | (12) |
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200 | (1) |
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Overview of MPEG-7 Motion Descriptors |
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201 | (1) |
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201 | (2) |
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203 | (1) |
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203 | (1) |
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204 | (2) |
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Applications of Motion Descriptors |
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206 | (2) |
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Video Browsing System Based on Motion Activity |
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208 | (4) |
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212 | (1) |
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Indexing with Low-Level Features: Color |
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212 | (1) |
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Indexing with Low-Level Features: Texture |
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213 | (1) |
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Indexing with Low-Level Features: Shape |
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214 | (1) |
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Indexing with Low-Level Features: Audio |
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215 | (2) |
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Indexing with User Feedback |
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217 | (1) |
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218 | (1) |
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Discussion and Conclusions |
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219 | (2) |
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A Unified Framework for Video Summarization, Browsing, and Retrieval |
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221 | (16) |
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221 | (2) |
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Video Highlights Extraction |
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223 | (4) |
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223 | (1) |
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224 | (1) |
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Audio-Visual Markers Association for Highlights Candidates Generation |
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225 | (1) |
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Finer-Resolution Highlights Recognition and Verification |
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226 | (1) |
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227 | (2) |
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A Unified Framework for Summarization, Browsing, and Retrieval |
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229 | (6) |
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Conclusions and Promising Research Directions |
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235 | (2) |
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237 | (12) |
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238 | (1) |
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Consumer Video Applications |
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238 | (4) |
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Challenges for Consumer Video Browsing Applications |
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241 | (1) |
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Image/Video Database Management |
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242 | (2) |
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244 | (3) |
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Challenges of Current Applications |
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247 | (1) |
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247 | (2) |
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249 | (4) |
Bibliography |
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253 | (8) |
About the Authors |
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261 | (4) |
Index |
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265 | |