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A multiplication-free framework for signal processing and applications in biomedical image analysis

机译:生物医学图像分析中信号处理和应用的无乘法框架

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摘要

A new framework for signal processing is introduced based on a novel vector product definition that permits a multiplier-free implementation. First a new product of two real numbers is defined as the sum of their absolute values, with the sign determined by product of the hard-limited numbers. This new product of real numbers is used to define a similar product of vectors in RN. The new vector product of two identical vectors reduces to a scaled version of the l1 norm of the vector. The main advantage of this framework is that it yields multiplication-free computationally efficient algorithms for performing some important tasks in signal processing. An application to the problem of cancer cell line image classification is presented that uses the notion of a co-difference matrix that is analogous to a covariance matrix except that the vector products are based on our new proposed framework. Results show the effectiveness of this approach when the proposed co-difference matrix is compared with a covariance matrix. © 2013 IEEE.
机译:基于一种新颖的矢量乘积定义,引入了一种新的信号处理框架,该定义允许无乘数实现。首先,将两个实数的新乘积定义为它们的绝对值之和,符号由硬限制数的乘积确定。此新的实数乘积用于定义RN中向量的相似乘积。两个相同向量的新向量乘积可简化为向量的l1范数的缩放版本。该框架的主要优点在于,它产生了无乘法运算效率高的算法,可以执行信号处理中的一些重要任务。提出了一种针对癌细胞系图像分类问题的应用,该概念使用类似于协方差矩阵的协差矩阵的概念,不同之处在于矢量乘积基于我们新提出的框架。当将拟议的协方差矩阵与协方差矩阵进行比较时,结果表明了该方法的有效性。 ©2013 IEEE。

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