CVLGMay 22, 2024

Visual Analysis of Prediction Uncertainty in Neural Networks for Deep Image Synthesis

arXiv:2406.18545v12 citationsh-index: 2IEEE Trans Vis Comput Graph
AI Analysis

This work addresses the need for robust uncertainty estimation in deep visualization models, which is incremental as it applies existing methods to enhance image synthesis tasks for scientific domains.

The paper tackles the problem of understanding prediction uncertainty in deep neural networks for image synthesis, demonstrating that uncertainty-aware models produce higher quality and more diverse visualizations while improving robustness and interpretability.

Ubiquitous applications of Deep neural networks (DNNs) in different artificial intelligence systems have led to their adoption in solving challenging visualization problems in recent years. While sophisticated DNNs offer an impressive generalization, it is imperative to comprehend the quality, confidence, robustness, and uncertainty associated with their prediction. A thorough understanding of these quantities produces actionable insights that help application scientists make informed decisions. Unfortunately, the intrinsic design principles of the DNNs cannot beget prediction uncertainty, necessitating separate formulations for robust uncertainty-aware models for diverse visualization applications. To that end, this contribution demonstrates how the prediction uncertainty and sensitivity of DNNs can be estimated efficiently using various methods and then interactively compared and contrasted for deep image synthesis tasks. Our inspection suggests that uncertainty-aware deep visualization models generate illustrations of informative and superior quality and diversity. Furthermore, prediction uncertainty improves the robustness and interpretability of deep visualization models, making them practical and convenient for various scientific domains that thrive on visual analyses.

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