Synthetic Fungi Datasets: A Time-Aligned Approach
Journal:
arXiv
Published Date:
Jan 6, 2025
Abstract
Fungi undergo dynamic morphological transformations throughout their
lifecycle, forming intricate networks as they transition from spores to mature
mycelium structures. To support the study of these time-dependent processes, we
present a synthetic, time-aligned image dataset that models key stages of
fungal growth. This dataset systematically captures phenomena such as spore
size reduction, branching dynamics, and the emergence of complex mycelium
networks. The controlled generation process ensures temporal consistency,
scalability, and structural alignment, addressing the limitations of real-world
fungal datasets. Optimized for deep learning (DL) applications, this dataset
facilitates the development of models for classifying growth stages, predicting
fungal development, and analyzing morphological patterns over time. With
applications spanning agriculture, medicine, and industrial mycology, this
resource provides a robust foundation for automating fungal analysis, enhancing
disease monitoring, and advancing fungal biology research through artificial
intelligence.