April 2, 2024
Report

Gumby: Quantifying multi-modal model resiliency

Abstract

With the rise of cheap data and sensors, more use cases are emerging for multi-input models. Research has shown that including multiple data modalities can improve performance, suggesting that deep learning models can successfully learn to leverage complementary information from different modalities. However, this improved predictive power comes with unanticipated costs: additional inputs change model resiliency and expand the threat space for adversarial attacks. We first provide theoretical underpinnings for how adversarial success scales with input dimension. We then characterize the performance of a suite of multispectral deep learning models with different fusion approaches, quantify their relative reliance on different input bands, and evaluate their robustness to naturalistic and adversarial image corruptions.

Published: April 2, 2024

Citation

Byler E.B., E.A. Bishoff, C.W. Godfrey, and M.A. McKay. 2023. Gumby: Quantifying multi-modal model resiliency Richland, WA: Pacific Northwest National Laboratory.