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GPU-based parallel optimization for real-time scale-invariant feature transform in binocular visual registration

机译:基于GPU的并行优化用于双目视觉配准中的实时尺度不变特征变换

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摘要

Scale-invariant feature transform (SIFT) is one of the widely used interest point features. It has been successfully applied in various computer vision algorithms like object detection, object tracking, robotic mapping, and large-scale image retrieval. Although SIFT descriptor is highly robust towards scale and rotation variations, the high computational complexity of the SIFT algorithm inhibits its use in applications demanding real-time response and in algorithms dealing with very large-scale databases. In order to be effective for image matching process in near real-time, the Compute Unified Device Architecture (CUDA) application programming interface of a graphics processing unit (GPU) is incorporated to speed up or improve the SIFT method. Experimental results show that the proposed GPU-based SIFT framework is suitable for image application in real time. It can improve the image matching process both in time and accuracy compared with conventional SIFT method.
机译:尺度不变特征变换(SIFT)是广泛使用的兴趣点特征之一。它已成功应用于各种计算机视觉算法,例如目标检测,目标跟踪,机器人映射和大规模图像检索。尽管SIFT描述符对于缩放和旋转变化具有很高的鲁棒性,但是SIFT算法的高计算复杂性阻止了它在要求实时响应的应用程序和处理大型数据库的算法中的使用。为了有效地用于近乎实时的图像匹配过程,并入了图形处理单元(GPU)的Compute Unified Device Architecture(CUDA)应用程序编程接口,以加快或改进SIFT方法。实验结果表明,所提出的基于GPU的SIFT框架适合实时图像应用。与传统的SIFT方法相比,它可以在时间和准确性上改善图像匹配过程。

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