Recent studies have demonstrated the strengths of convolutional neural networks (CNNs) in a range of applications in fluid dynamics. However, most studies have been performed on structured grids since traditional convolutional operations in CNNs are founded on image processing. We here introduce the use of a Voronoi diagram, as a simple data preprocessing step, to interface the structured grid-based convolutional methods and unstructured data arising from sparse sensor placements or unstructured grids widely used in numerical simulations. The Voronoi diagram provides a structured-grid approximation of low-dimensional measurements based on Euclidean distance from the unstructured data. The present idea serves as a proof of concept for spatial fluid flow reconstruction on unstructured grids or from randomly placed sensors. To demonstrate the overall CNN approach with the Voronoi diagram inputs …