Dynamics of protein self-assembly on the inorganic surface and the resultant
geometric patterns are visualized using high-speed atomic force microscopy. The
time dynamics of the classical macroscopic descriptors such as 2D Fast Fourier
Transforms (FFT), correlation and pair distribution function are explored using
the unsupervised linear unmixing, demonstrating the presence of static ordered
and dynamic disordered phases and establishing their time dynamics. The deep
learning (DL)-based workflow is developed to analyze detailed particle dynamics
on the particle-by-particle level. Beyond the macroscopic descriptors, we
utilize the knowledge of local particle geometries and configurations to
explore the evolution of local geometries and reconstruct the interaction
potential between the particles. Finally, we use the machine learning-based
feature extraction to define particle neighborhood free of physics constraints.
This approach allowed separating the possible classes of particle behavior,
identify the associated transition probabilities, and further extend this
analysis to identify slow modes and associated configurations, allowing for
systematic exploration and predictive modeling of the time dynamics of the
system. Overall, this work establishes the DL based workflow for the analysis
of the self-organization processes in complex systems from observational data
and provides insight into the fundamental mechanisms