gpu加速高斯过程的目标检测

C. Blair, J. Thompson, N. Robertson
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引用次数: 1

摘要

高斯过程分类(GPC)可以准确可靠地检测物体。平方误差或径向基函数核的高计算负荷限制了GPC的应用,因为内存需求和计算时间都是限制因素。我们描述了我们在GPU(图形处理单元)上加速GPC的版本。gpu的内存有限,因此任何GPC实现都必须具有内存效率和计算效率。以高性能行人检测器为出发点,我们使用其打包或基于块的特征描述符,并演示了GPC的快速矩阵乘法实现,该实现也具有极高的内存效率。我们演示了比多核、blas优化的CPU实现的速度提高3.7倍。结果表明,该算法比支持向量机算法的结果更准确、更可靠。
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GPU-Accelerated Gaussian Processes for Object Detection
Gaussian Process classification (GPC) allows accurate and reliable detection of objects. The high computational load of squared-error or radial basis function kernels limits the applications that GPC can be used in, as memory requirements and computation time are both limiting factors. We describe our version of accelerated GPC on GPU (Graphics Processing Unit). GPUs have limited memory so any GPC implementation must be memory-efficient as well as computationally efficient. Using a high-performance pedestrian detector as a starting point, we use its packed or block-based feature descriptor and demonstrate a fast matrix multiplication implementation of GPC which is also extremely memory efficient. We demonstrate a speed up of 3.7 times over a multicore, BLAS-optimised CPU implementation. Results show that this is more accurate and reliable than results obtained from a comparable support vector machine algorithm.
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