Key research themes
1. How do statistical noise variance models characterize and facilitate noise removal in digital imaging?
This research area focuses on the development and analysis of statistical models describing noise variance in digital images, which is critical for effective noise removal and image restoration. Understanding the nature, origin, and statistical properties of different noise types enables design of tailored denoising techniques. Accurate noise variance characterization matters because it quantifies the uncertainty and degradation in image signals during acquisition, transmission, or processing, thus facilitating improved image quality through model-informed denoising.
2. What roles do noise variance and stochastic fluctuations play in complex biological and gene expression systems?
This theme investigates how intrinsic and extrinsic noise variance contributes to stochastic dynamics in living systems, particularly focusing on biological signaling, gene circuits, and cellular processes. The role of noise variance is critical in understanding phenotypic variability, gene expression heterogeneity, and the modulation of cellular growth rates, with implications for stress response, drug tolerance, and developmental biology. Analytical and stochastic modeling approaches capture the impact of noise variance on system behavior and provide insights on controlling or exploiting stochastic fluctuations in biology.
3. How can the presence and impact of noise variance in stochastic nonlinear dynamical systems be rigorously analyzed, particularly in terms of large deviations and noise-induced transitions?
This research field focuses on quantifying the effects of noise variance—especially multiplicative and colored noise—in nonlinear stochastic differential equations modeling physical, chemical, or biological systems. It addresses how noise variance impacts solution trajectories through large deviation principles and can induce qualitative transitions in system dynamics (e.g., noise-induced bistability). Analytical and perturbative methods enable understanding of noise variance-driven phenomena beyond classical Gaussian white noise cases, enhancing predictability of stochastic systems.