Linear SVM Classification of Visual Objects using a Dense Image Representation
author:
Frederic Jurie,
Institut National de Recherche en Informatique et en Automatique
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| Slides | |
| 0:02 | Linear SVM Classification of Visual Objects using a Dense Image Representation |
| 0:20 | Overview |
| 1:33 | Codebook construction |
| 1:44 | Overview |
| 1:58 | Linear SVM Classification of Visual Objects using a Dense Image Representation |
| 3:25 | Image representation |
| 4:06 | Dimensionality reduction |
| 4:21 | Image classification |
| 4:36 | Keypoint : Clustering the feature space |
| 6:04 | Facing unbalanced densities |
| 6:55 | Experiments with the PASCAL dataset (test1 only) |
| 8:54 | Bicycles |
| 11:42 | Cars |
| 11:47 | Motorbikes |
| 11:54 | Persons |
| 18:15 | cars |
| 18:42 | Bikes |
| 19:01 | Motorbikes |
| 19:11 | People |
| 20:00 | Comments on the results |
| 20:04 | Conclusions |
| 21:22 | Suggestion for next competitions |
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