| Literature DB >> 25328635 |
Antonio Ruiz1, Manuel Ujaldon1, Lee Cooper2, Kun Huang2.
Abstract
Microscopic imaging is an important tool for characterizing tissue morphology and pathology. 3D reconstruction and visualization of large sample tissue structure requires registration of large sets of high-resolution images. However, the scale of this problem presents a challenge for automatic registration methods. In this paper we present a novel method for efficient automatic registration using graphics processing units (GPUs) and parallel programming. Comparing a C++ CPU implementation with Compute Unified Device Architecture (CUDA) libraries and pthreads running on GPU we achieve a speed-up factor of up to 4.11× with a single GPU and 6.68× with a GPU pair. We present execution times for a benchmark composed of two sets of large-scale images: mouse placenta (16K × 16K pixels) and breast cancer tumors (23K × 62K pixels). It takes more than 12 hours for the genetic case in C++ to register a typical sample composed of 500 consecutive slides, which was reduced to less than 2 hours using two GPUs, in addition to a very promising scalability for extending those gains easily on a large number of GPUs in a distributed system.Entities:
Keywords: Feature detection; Graphics processors; High-performance computing; Image registration and segmentation; Microscopic imaging; Pattern analysis
Year: 2009 PMID: 25328635 PMCID: PMC4198069 DOI: 10.1007/s11265-008-0208-4
Source DB: PubMed Journal: J Signal Process Syst ISSN: 1939-8115