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Learning Informative SIFT Descriptors for Attentive Object Recognition
| Content Provider | Semantic Scholar |
|---|---|
| Author | Seifert, Christin Fritz, Gerald Paletta, Lucas Bischof, Horst |
| Copyright Year | 2005 |
| Abstract | With the emerging sensor technologies in mobile devices, such as camera\nphones, visual interpretation methodologies are challenged to provide solutions within the everydays outdoor urban environment. For this purpose, we propose to apply the 'Informative Descriptor Approach' on the SIFT descriptor [4], in order to define the informative SIFT (i-SIFT) descriptor. By attentive matching of i-SIFT keypoints, we provide an innovative method on object detection that significantly improves SIFT based keypoint matching. i-SIFT tackles the SIFT bottlenecks, e.g., extensive nearest neighbor indexing, by (i) significantly reducing the descriptor dimensionality, (ii) decreasing the size of object representation by one order of magnitude, and (iii) performing matching exclusively on attended descriptors, as required by resource sensitive devices. The key advantages of informative SIFT (i-SIFT) are demonstrated in a typical outdoor mobile vision experiment on the TSG-20 reference database, detecting buildings with high accuracy. |
| Starting Page | 67 |
| Ending Page | 74 |
| Page Count | 8 |
| File Format | PDF HTM / HTML |
| Alternate Webpage(s) | http://christinseifert.info/paper/Seifert2005_preprint.pdf |
| Language | English |
| Access Restriction | Open |
| Content Type | Text |
| Resource Type | Article |