{"title":"斯特克洛夫采样算子的收敛性和高阶近似性","authors":"Danilo Costarelli","doi":"10.1007/s43037-024-00377-3","DOIUrl":null,"url":null,"abstract":"<p>In this paper we introduce a new class of sampling-type operators, named Steklov sampling operators. The idea is to consider a sampling series based on a kernel function that is a discrete approximate identity, and which constitutes a reconstruction process of a given signal <i>f</i>, based on a family of sample values which are Steklov integrals of order <i>r</i> evaluated at the nodes <i>k</i>/<i>w</i>, <span>\\(k \\in {\\mathbb {Z}}\\)</span>, <span>\\(w>0\\)</span>. The convergence properties of the introduced sampling operators in continuous functions spaces and in the <span>\\(L^p\\)</span>-setting have been studied. Moreover, the main properties of the Steklov-type functions have been exploited in order to establish results concerning the high order of approximation. Such results have been obtained in a quantitative version thanks to the use of the well-known modulus of smoothness of the approximated functions, and assuming suitable Strang-Fix type conditions, which are very typical assumptions in applications involving Fourier and Harmonic analysis. Concerning the quantitative estimates, we proposed two different approaches; the first one holds in the case of Steklov sampling operators defined with kernels with compact support, its proof is substantially based on the application of the generalized Minkowski inequality, and it is valid with respect to the <i>p</i>-norm, with <span>\\(1 \\le p \\le +\\infty \\)</span>. In the second case, the restriction on the support of the kernel is removed and the corresponding estimates are valid only for <span>\\(1 < p\\le +\\infty \\)</span>. Here, the key point of the proof is the application of the well-known Hardy–Littlewood maximal inequality. Finally, a deep comparison between the proposed Steklov sampling series and the already existing sampling-type operators has been given, in order to show the effectiveness of the proposed constructive method of approximation. Examples of kernel functions satisfying the required assumptions have been provided.</p>","PeriodicalId":55400,"journal":{"name":"Banach Journal of Mathematical Analysis","volume":null,"pages":null},"PeriodicalIF":1.1000,"publicationDate":"2024-08-30","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Convergence and high order of approximation by Steklov sampling operators\",\"authors\":\"Danilo Costarelli\",\"doi\":\"10.1007/s43037-024-00377-3\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p>In this paper we introduce a new class of sampling-type operators, named Steklov sampling operators. 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Concerning the quantitative estimates, we proposed two different approaches; the first one holds in the case of Steklov sampling operators defined with kernels with compact support, its proof is substantially based on the application of the generalized Minkowski inequality, and it is valid with respect to the <i>p</i>-norm, with <span>\\\\(1 \\\\le p \\\\le +\\\\infty \\\\)</span>. In the second case, the restriction on the support of the kernel is removed and the corresponding estimates are valid only for <span>\\\\(1 < p\\\\le +\\\\infty \\\\)</span>. Here, the key point of the proof is the application of the well-known Hardy–Littlewood maximal inequality. Finally, a deep comparison between the proposed Steklov sampling series and the already existing sampling-type operators has been given, in order to show the effectiveness of the proposed constructive method of approximation. 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引用次数: 0
摘要
在本文中,我们介绍了一类新的采样算子,名为 Steklov 采样算子。我们的想法是考虑基于离散近似特征的核函数的采样序列,它构成了给定信号 f 的重构过程,基于一系列采样值,这些采样值是在节点 k/w, \(k \in {\mathbb {Z}\}), \(w>0\)处求值的 r 阶斯特克洛夫积分。研究了引入的采样算子在连续函数空间和 \(L^p\)-setting 中的收敛特性。此外,还利用了斯特克洛夫型函数的主要性质,以建立有关高阶近似的结果。由于使用了众所周知的近似函数平滑度模量,并假设了合适的斯特朗-菲克斯(Strang-Fix)型条件,这些结果以定量的形式获得,这些条件在涉及傅里叶和谐波分析的应用中是非常典型的假设。关于定量估计,我们提出了两种不同的方法;第一种方法在斯特克洛夫采样算子的情况下成立,其定义的核具有紧凑的支持,其证明主要基于广义闵科夫斯基不等式的应用,它对 p 准则有效,具有 (1 \le p \le +\infty \)。在第二种情况下,去掉了对内核支持的限制,相应的估计只对\(1 < p\le +\infty \)有效。这里,证明的关键点是应用著名的哈代-利特尔伍德最大不等式。最后,我们还深入比较了所提出的斯特克洛夫采样序列和已有的采样型算子,以显示所提出的构造近似方法的有效性。此外,还提供了满足所需假设的核函数示例。
Convergence and high order of approximation by Steklov sampling operators
In this paper we introduce a new class of sampling-type operators, named Steklov sampling operators. The idea is to consider a sampling series based on a kernel function that is a discrete approximate identity, and which constitutes a reconstruction process of a given signal f, based on a family of sample values which are Steklov integrals of order r evaluated at the nodes k/w, \(k \in {\mathbb {Z}}\), \(w>0\). The convergence properties of the introduced sampling operators in continuous functions spaces and in the \(L^p\)-setting have been studied. Moreover, the main properties of the Steklov-type functions have been exploited in order to establish results concerning the high order of approximation. Such results have been obtained in a quantitative version thanks to the use of the well-known modulus of smoothness of the approximated functions, and assuming suitable Strang-Fix type conditions, which are very typical assumptions in applications involving Fourier and Harmonic analysis. Concerning the quantitative estimates, we proposed two different approaches; the first one holds in the case of Steklov sampling operators defined with kernels with compact support, its proof is substantially based on the application of the generalized Minkowski inequality, and it is valid with respect to the p-norm, with \(1 \le p \le +\infty \). In the second case, the restriction on the support of the kernel is removed and the corresponding estimates are valid only for \(1 < p\le +\infty \). Here, the key point of the proof is the application of the well-known Hardy–Littlewood maximal inequality. Finally, a deep comparison between the proposed Steklov sampling series and the already existing sampling-type operators has been given, in order to show the effectiveness of the proposed constructive method of approximation. Examples of kernel functions satisfying the required assumptions have been provided.
期刊介绍:
The Banach Journal of Mathematical Analysis (Banach J. Math. Anal.) is published by Birkhäuser on behalf of the Tusi Mathematical Research Group.
Banach J. Math. Anal. is a peer-reviewed electronic journal publishing papers of high standards with deep results, new ideas, profound impact, and significant implications in all areas of functional analysis and operator theory and all modern related topics. Banach J. Math. Anal. normally publishes survey articles and original research papers numbering 15 pages or more in the journal’s style. Shorter papers may be submitted to the Annals of Functional Analysis or Advances in Operator Theory.