Name | DL | Torrents | Total Size | Deep Learning [edit] | 50 | 963.86GB | 475 | 0 |
256_ObjectCategories.tar | 1.18GB |
Type: Dataset
Tags:
Bibtex:
Tags:
Bibtex:
@article{, title= {Caltech256 Image Dataset}, journal= {}, author= {Greg Griffin and Alex Holub and Pietro Perona}, year= {2006}, url= {http://www.vision.caltech.edu/Image_Datasets/Caltech256/}, abstract= {==Overview 256 Object Categories + Clutter At least 80 images per category 30608 images instead of 9144 ==Caltech-101: Drawbacks Smallest category size is 31 images: Too easy? left-right aligned Rotation artifacts Soon will saturate performance ==Caltech-256 : New Features Smallest category size now 80 images Harder Not left-right aligned No artifacts Performance is halved More categories New and larger clutter category ==Collection Procedure Similar to Caltech-101 (Li, Fergus, Perona) Four sorters rate the images 1 good: a clear example 2 bad: confusing, occluded, cluttered, or artistic 3 not applicable: object category not present 92,652 Images from Google and Picsearch 32.1% were rated good and kept Some images borrowed from 29 of the largest Caltech-101 categories (green) ==Acknowledgements Rob Fergus and Fei Fei Li, Pierre Moreels for code and procedures developed for the Caltech-101 image set Marco Ranzato and Claudio Fanti for miscellaneous help Sorters: Lis Fano, Nick Lo, Julie May, Weiyu Xu for making this image set possible with their hard work Please site as: Griffin, G. Holub, AD. Perona, P. The Caltech 256. Caltech Technical Report. The technical report will be available shortly.}, keywords= {}, terms= {} }