Cophir A Test Collection For Content-based Image Retrieval | Awesome Learning to Hash Add your paper to Learning2Hash

Cophir A Test Collection For Content-based Image Retrieval

Bolettieri Paolo, Esuli Andrea, Falchi Fabrizio, Lucchese Claudio, Perego Raffaele, Piccioli Tommaso, Rabitti Fausto. Arxiv 2009

[Paper]    
ARXIV Image Retrieval

The scalability, as well as the effectiveness, of the different Content-based Image Retrieval (CBIR) approaches proposed in literature, is today an important research issue. Given the wealth of images on the Web, CBIR systems must in fact leap towards Web-scale datasets. In this paper, we report on our experience in building a test collection of 100 million images, with the corresponding descriptive features, to be used in experimenting new scalable techniques for similarity searching, and comparing their results. In the context of the SAPIR (Search on Audio-visual content using Peer-to-peer Information Retrieval) European project, we had to experiment our distributed similarity searching technology on a realistic data set. Therefore, since no large-scale collection was available for research purposes, we had to tackle the non-trivial process of image crawling and descriptive feature extraction (we used five MPEG-7 features) using the European EGEE computer GRID. The result of this effort is CoPhIR, the first CBIR test collection of such scale. CoPhIR is now open to the research community for experiments and comparisons, and access to the collection was already granted to more than 50 research groups worldwide.

Similar Work