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首页> 外文期刊>Microprocessors and microsystems >Utilization of a fast MSE calculation approach to improve the image quality and accelerate the operation of a hardware K-SOM quantizer
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Utilization of a fast MSE calculation approach to improve the image quality and accelerate the operation of a hardware K-SOM quantizer

机译:利用快速的MSE计算方法来改善图像质量并加速硬件K-SOM量化器的运行

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摘要

A K-SOM quantizer and its hardware implementation requires a considerable amount of processing time during the learning stage. This results from the fact that a queried pixel which is taken from an input image needs to be tested with all codewords in the codebook. This is done in order to find and update the codeword whose distance is the shortest; i.e. the best matching unit (BMU). The processes are iter-atively performed until either all pixels are processed or a quantization error is acceptable. During the learning stage, the learning rate is gradually adjusted to condense the codebook to represent an input image. Several approaches have been proposed to accelerate the processing time during the learning stage ranging from a simple pixel sub-sampling approach to an approach to accelerate the BMU finding process. In this paper, we present a novel approach to terminate the learning stage when the mean square error (MSE) is acceptable. A fast mean square error calculation involving selecting and subsampling pixels is incorporated into the algorithm. The experimental results confirm that the approach outperforms the state-of-the-art hardware K-SOM quantizer in terms of execution time and MSE. This comes in exchange with an additional resources utilization of around 30% on a field programmable gate array platform.
机译:在学习阶段,K-SOM量化器及其硬件实现需要大量的处理时间。这是由于以下事实:从输入图像获取的查询像素需要使用代码簿中的所有代码字进行测试。这样做是为了查找和更新距离最短的代码字。即最佳匹配单位(BMU)。迭代地执行这些过程,直到处理完所有像素或可接受的量化误差为止。在学习阶段,逐渐调整学习速率以压缩码本以表示输入图像。已经提出了几种方法来加速学习阶段的处理时间,从简单的像素子采样方法到加速BMU查找过程的方法。在本文中,我们提出了一种新颖的方法来在均方误差(MSE)可接受时终止学习阶段。快速的均方误差计算涉及算法的选择和二次采样。实验结果证实,该方法在执行时间和MSE方面均优于最新的硬件K-SOM量化器。这是通过在现场可编程门阵列平台上增加约30%的资源利用率来进行交换的。

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