一种无溢出不动点特征值分解算法:高光谱图像降维的实例研究

Bibek Kabi, Anand S. Sahadevan, Tapan Pradhan
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引用次数: 5

摘要

我们考虑了一个可靠不动点设计的特征值分解(EVD)算法的鲁棒范围估计问题。定点电路的简单性一直是在定点算法中实现EVD算法的诱惑。为了实现有效的定点设计,整数位宽分配是影响精度和硬件效率的重要步骤。本文分析了现有距离估计方法的不足,推导了EVD算法的变量界。鉴于这种情况,我们引入了一种基于向量和矩阵范数性质的距离估计方法,以及一种保持分析方法所有资产的缩放程序。该方法可以得到EVD算法变量的鲁棒性和紧性边界。使用该方法导出的边界对于任何输入矩阵都是相同的,并且与问题的迭代次数或大小无关。一些基准的高光谱数据集被用来评估所提出的技术的效率。结果表明,采用所提出的极差估计方法,Jacobi EVD计算过程中产生的所有变量都在±1以内有界。
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An overflow free fixed-point eigenvalue decomposition algorithm: Case study of dimensionality reduction in hyperspectral images
We consider the problem of enabling robust range estimation of eigenvalue decomposition (EVD) algorithm for a reliable fixed-point design. The simplicity of fixed-point circuitry has always been so tempting to implement EVD algorithms in fixed-point arithmetic. Working towards an effective fixed-point design, integer bit-width allocation is a significant step which has a crucial impact on accuracy and hardware efficiency. This paper investigates the shortcomings of the existing range estimation methods while deriving bounds for the variables of the EVD algorithm. In light of the circumstances, we introduce a range estimation approach based on vector and matrix norm properties together with a scaling procedure that maintains all the assets of an analytical method. The method could derive robust and tight bounds for the variables of EVD algorithm. The bounds derived using the proposed approach remain same for any input matrix and are also independent of the number of iterations or size of the problem. Some benchmark hyperspectral data sets have been used to evaluate the efficiency of the proposed technique. It was found that by the proposed range estimation approach, all the variables generated during the computation of Jacobi EVD is bounded within ±1.
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