Paahuni Khandelwal, M. Warushavithana, S. Pallickara, S. Pallickara
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Deep Learning based Approach for Fast, Effective Visualization of Voluminous Gridded Spatial Observations
Gridded spatial datasets arise naturally in environmental, climatic, meteorological, and ecological settings. Each grid point encapsulates a vector of variables representing different measures of interest. Gridded datasets tend to be voluminous since they encapsulate observations for long timescales. Visualizing such datasets poses significant challenges stemming from the need to preserve interactivity, manage I/O overheads, and cope with data volumes. Here we present our methodology to significantly alleviate I/O requirements by leveraging deep neural network-based models.