Fast Scale Invariant Feature Detection and Matching on Programmable Graphics Hardware

Anchorage, AK(2008)

引用 219|浏览40
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摘要
Ever since the introduction of freely programmable hard- ware components into modern graphics hardware, graphics processing units (GPUs) have become increasingly popular for general purpose computations. Especially when applied to computer vision algorithms where a Single set of Instruc- tions has to be executed on Multiple Data (SIMD), GPU- based algorithms can provide a major increase in process- ing speed compared to their CPU counterparts. This pa- per presents methods that take full advantage of modern graphics card hardware for real-time scale invariant feature detection and matching. The focus lies on the extraction of feature locations and the generation of feature descrip- tors from natural images. The generation of these feature- vectors is based on the Speeded Up Robust Features (SURF) method (1) due to its high stability against rotation, scale and changes in lighting condition of the processed images. With the presented methods feature detection and matching can be performed at framerates exceeding 100 frames per second for 640 480 images. The remaining time can then be spent on fast matching against large feature databases on the GPU while the CPU can be used for other tasks.
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关键词
pixel,surf,frames per second,central processing unit,data mining,feature extraction,computer vision,interpolation,graphics hardware,hardware,feature vector,filtering,real time,computer graphics,graphics,feature detection,kernel
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