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首页> 外文期刊>International Journal of Image Processing >Image Registration for Recovering Affine Transformation Using Nelder Mead Simplex Method for Optimization
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Image Registration for Recovering Affine Transformation Using Nelder Mead Simplex Method for Optimization

机译:使用Nelder Mead单纯形法进行图像配准以恢复仿射变换

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摘要

This paper proposes a parallel approach for the Vector Quantization (VQ) problem in image processing. VQ deals with codebook generation from the input training data set and replacement of any arbitrary data with the nearest codevector. Most of the efforts in VQ have been directed towards designing parallel search algorithms for the codebook, and little has hitherto been done in evolving a parallelized procedure to obtain an optimum codebook. This parallel algorithm addresses the problem of designing an optimum codebook using the traditional LBG type of vector quantization algorithm for shared memory systems and for the efficient usage of parallel processors. Using the codebook formed from a training set, any arbitrary input data is replaced with the nearest codevector from the codebook. The effectiveness of the proposed algorithm is indicated.
机译:本文针对图像处理中的矢量量化(VQ)问题提出了一种并行方法。 VQ处理从输入训练数据集生成的码本,并用最接近的码向量替换任意数据。 VQ的大部分工作都针对设计码本的并行搜索算法,而迄今为止,在发展并行化过程以获得最佳码本方面所做的工作很少。这种并行算法解决了使用传统LBG类型的矢量量化算法为共享存储系统和并行处理器的有效使用设计最佳码本的问题。使用由训练集形成的码本,所有任意输入数据都将替换为该码本中最接近的码向量。表明了所提算法的有效性。

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