@inproceedings{sun2013indexing, author = {Sun, Xinghai and Wang, Changhu and Xu, Chao and Zhang, Lei}, title = {Indexing Billions of Images for Sketch-based Retrieval}, year = {2013}, month = {January}, abstract = {Because of the popularity of touch-screen devices, it has be- come a highly desirable feature to retrieve images from a huge repository by matching with a hand-drawn sketch. Al- though searching images via keywords or an example image has been successfully launched in some commercial search engines of billions of images, it is still very challenging for both academia and industry to develop a sketch-based image retrieval system on a billion-level database. In this work, we systematically study this problem and try to build a sys- tem to support query-by-sketch for two billion images. The raw edge pixel and Chamfer matching are selected as the basic representation and matching in this system, owning to the superior performance compared with other methods in extensive experiments. To get a more compact feature and a faster matching, a vector-like Chamfer feature pair is introduced, based on which the complex matching is refor- mulated as the crossover dot-product of feature pairs. Based on this new formulation, a compact shape code is developed to represent each image/sketch by projecting the Chamfer features to a linear subspace followed by a non-linear source coding. Finally, the multi-probe Kmedoids-LSH is leveraged to index database images, and the compact shape codes are further used for fast reranking. Extensive experiments show the effectiveness of the proposed features and algorithms in building such a sketch-based image search system.}, publisher = {ACM Conference on Multimedia}, url = {http://approjects.co.za/?big=en-us/research/publication/indexing-billions-of-images-for-sketch-based-retrieval/}, }