. "Seidl, Thomas" . "Beecks, Christian" . "RIV/00216208:11320/11:10100163!RIV12-GA0-11320___" . . "11320" . . "5"^^ . . . . . . "Processing the Signature Quadratic Form Distance on Many-Core GPU Architectures" . . "RIV/00216208:11320/11:10100163" . . "Kruli\u0161, Martin" . . . "4"^^ . "New York" . "P(GAP202/11/0968), S, Z(MSM0021620838)" . "[6BF8BDCA080D]" . "ACM" . "Processing the Signature Quadratic Form Distance on Many-Core GPU Architectures"@en . "Glasgow" . "2011-10-24+02:00"^^ . . "Processing the Signature Quadratic Form Distance on Many-Core GPU Architectures"@en . "The Signature Quadratic Form Distance on feature signatures represents a flexible distance-based similarity model for effective content-based multimedia retrieval. Although metric indexing approaches are able to speed up query processing by two orders of magnitude, their applicability to large-scale multimedia databases containing billions of images is still a challenging issue. In this paper, we propose the utilization of GPUs for efficient query processing with the Signature Quadratic Form Distance. We show how to process multiple distance computations in parallel and demonstrate efficient query processing by comparing many-core GPU with multi-core CPU implementations." . . . "Loko\u010D, Jakub" . "Compilation Proceedings of CIKM 2011 and the co-located Workshops" . "224176" . . . "Skopal, Tom\u00E1\u0161" . . . "Processing the Signature Quadratic Form Distance on Many-Core GPU Architectures" . "similarity search; quadratic form distance; many-core; GPU"@en . "3"^^ . . . "978-1-4503-0717-8" . . . "The Signature Quadratic Form Distance on feature signatures represents a flexible distance-based similarity model for effective content-based multimedia retrieval. Although metric indexing approaches are able to speed up query processing by two orders of magnitude, their applicability to large-scale multimedia databases containing billions of images is still a challenging issue. In this paper, we propose the utilization of GPUs for efficient query processing with the Signature Quadratic Form Distance. We show how to process multiple distance computations in parallel and demonstrate efficient query processing by comparing many-core GPU with multi-core CPU implementations."@en .