用于k-NN分类问题的柔性IP核及其FPGA实现

E. Manolakos, I. Stamoulias
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引用次数: 13

摘要

k近邻(k-NN)是一种流行的非参数基准分类算法,新分类器通常与之比较。它被用于许多应用中,其中一些应用可能在可能非常高维的特征空间中涉及数千个数据向量。对于实时分类,该算法的硬件实现可以通过利用并行处理和块流水线来获得高性能。我们提出了两种不同的线性阵列架构,它们在VHDL中被描述为软参数化IP核。IP核用于综合和评估不同k-NN问题实例和赛灵思fpga的各种阵列架构。结果表明,我们可以使用一个中等大小的FPGA器件,高效地解决具有数千个参考数据向量或向量维数的超大规模分类问题,同时实现非常高的吞吐量。据我们所知,这是第一次为广泛使用的k-NN分类器的FPGA实现设计灵活的IP内核。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Flexible IP cores for the k-NN classification problem and their FPGA implementation
The k-nearest neighbor (k-NN) is a popular non-parametric benchmark classification algorithm to which new classifiers are usually compared. It is used in numerous applications, some of which may involve thousands of data vectors in a possibly very high dimensional feature space. For real-time classification a hardware implementation of the algorithm can deliver high performance gains by exploiting parallel processing and block pipelining. We present two different linear array architectures that have been described as soft parameterized IP cores in VHDL. The IP cores are used to synthesize and evaluate a variety of array architectures for a different k-NN problem instances and Xilinx FPGAs. It is shown that we can solve efficiently, using a medium size FPGA device, very large size classification problems, with thousands of reference data vectors or vector dimensions, while achieving very high throughput. To the best of our knowledge, this is the first effort to design flexible IP cores for the FPGA implementation of the widely used k-NN classifier.
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