论文标题
具有高斯系数的三角单变量多项式的精确SOHS分解
Exact SOHS decompositions of trigonometric univariate polynomials with Gaussian coefficients
论文作者
论文摘要
证明三角多项式的积极性对于离散时间信号处理中的设计问题至关重要。从riesz-fejéz光谱分解定理中众所周知,单位圆的任何三角单变量多项式阳性都可以分解为具有复杂系数的Hermitian正方形。在这里,我们关注具有高斯整数系数的多项式情况,即真实和虚构的部分是整数。我们在理论上和实践上设计,分析和比较三种杂交数字符号算法计算三角单变量多项式在单位圆上具有高斯系数呈呈阳性多项式的平方分解的加权总和。第一和第二算法依赖的数值步骤分别是复杂的根部隔离和半决赛编程。凭借补偿技术,获得了精确的Hermitian广场分解。第三种算法也基于复杂的半足限编程,是Peyrl和Parrilo对圆形和投影算法的改编。对于所有三种算法,我们证明了位复杂性和输出尺寸估计值,这些估计值在输入程度上是多项式的,并且在其系数的最大值中是线性的。我们将它们在随机选择的基准测试中进行比较,并进一步设计有限的脉冲滤波器。
Certifying the positivity of trigonometric polynomials is of first importance for design problems in discrete-time signal processing. It is well known from the Riesz-Fejéz spectral factorization theorem that any trigonometric univariate polynomial positive on the unit circle can be decomposed as a Hermitian square with complex coefficients. Here we focus on the case of polynomials with Gaussian integer coefficients, i.e., with real and imaginary parts being integers. We design, analyze and compare, theoretically and practically,three hybrid numeric-symbolic algorithms computing weighted sums of Hermitian squares decompositions for trigonometric univariate polynomials positive on the unit circle with Gaussian coefficients. The numerical steps the first and second algorithm rely on are complex root isolation and semidefinite programming, respectively. An exact sum of Hermitian squares decomposition is obtained thanks to compensation techniques. The third algorithm, also based on complex semidefinite programming, is an adaptation of the rounding and projection algorithm by Peyrl and Parrilo. For all three algorithms, we prove bit complexity and output size estimates that are polynomial in the degree of the input and linear in the maximum bitsize of its coefficients. We compare their performance on randomly chosen benchmarks, and further design a certified finite impulse filter.