Generative modeling of convergence maps based on predicted one-point statistics
Generative modeling of convergence maps based on predicted one-point statistics
Context: Weak gravitational lensing is a key cosmological probe for current and future large-scale surveys. While power spectra are commonly used for analyses, they fail to capture non-Gaussian information from nonlinear structure formation, necessitating higher-order statistics and methods for efficient map generation. Aims: To develop an emulator that generates accurate convergence maps directly from an input power spectrum and wavelet l1-norm without relying on computationally intensive simulations. Methods: We use either numerical or theoretical predictions to construct convergence maps by iteratively adjusting wavelet coefficients to match target marginal distributions and their inter-scale dependencies, incorporating higher-order statistical information. Results: The resulting kappa maps accurately reproduce the input power spectrum and exhibit higher-order statistical properties consistent with the input predictions, providing an efficient tool for weak lensing analyses.
Vilasini Tinnaneri Sreekanth、Jean-Luc Starck、Sandrine Codis
天文学
Vilasini Tinnaneri Sreekanth,Jean-Luc Starck,Sandrine Codis.Generative modeling of convergence maps based on predicted one-point statistics[EB/OL].(2025-07-02)[2025-07-16].https://arxiv.org/abs/2507.01707.点此复制
评论