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Optimal Estimation and Detection in Homogeneous Spaces

机译:齐次空间中的最优估计与检测

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This paper presents estimation and detection techniques in homogeneous spaces that are optimal under the squared error loss function. The data is collected on a manifold which forms a homogeneous space under the transitive action of a compact Lie group. Signal estimation problems are addressed by formulating Wiener-Hopf equations for homogeneous spaces. The coefficient functions of these equations are the signal correlations which are assumed to be known. The resulting coupled integral equations on the manifold are converted to Wiener-Hopf convolutional integral equations on the group. These are solved using the Peter-Weyl theory of Fourier transform on compact Lie groups. The computational complexity of this algorithm is reduced using the bi-invariance of the correlations with respect to a stabilizer subgroup. The theory of matched filtering for isotropic signal fields is developed for signal classification where given a set of template signals on the manifold and a noisy test signal, the objective is to optimally detect the template buried in the test signal. This is accomplished by designing a filter on the manifold that maximizes the signal-to-noise-ratio (SNR) of the filtered output. An expression for the SNR is obtained as a ratio of quadratic forms expressed as Haar integrals over the transformation group. These integrals are expressed in the Fourier domain as infinite sums over the irreducible representations. Simplification of these sums is achieved by invariance properties of the signal function and the noise correlation function. The Wiener filter and matched filter are developed for an abstract homogeneous space and then specialized to the case of spherical signals under the action of the rotation group. Applications of these algorithms to denoising of 3D surface data, visual navigation with omnidirectional camera and detection of compact embedded objects in the stochastic background are discussed with experimental results.
机译:本文介绍了均方空间中的估计和检测技术,这些技术在平方误差损失函数下是最优的。数据收集在流形上,该流形在紧凑的Lie群的传递作用下形成均匀的空间。信号估计问题通过为均匀空间制定Wiener-Hopf方程来解决。这些方程的系数函数是假定为已知的信号相关性。流形上的结果耦合积分方程被转换为该组上的Wiener-Hopf卷积积分方程。这些是使用紧凑的Lie群上的傅立叶变换的Peter-Weyl理论解决的。使用相对于稳定子组的相关性的双不变性,可以降低该算法的计算复杂性。针对各向同性信号场的匹配滤波理论被开发用于信号分类,其中给定歧管上的一组模板信号和一个有噪声的测试信号,目标是最佳地检测掩埋在测试信号中的模板。这是通过在歧管上设计一个滤波器来实现的,该滤波器可使滤波后的输出的信噪比(SNR)最大化。获得的SNR表达式为二次形式的比值,表示为变换组上的Haar积分。这些积分在傅立叶域中表示为不可约表示的无限和。这些总和的简化是通过信号函数和噪声相关函数的不变性来实现的。 Wiener滤波器和匹配滤波器是为抽象的均匀空间而开发的,然后在旋转组的作用下专门用于球形信号的情况。结合实验结果讨论了这些算法在3D表面数据去噪,全向摄像机视觉导航和随机背景下紧凑型嵌入式物体检测中的应用。

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