TL;DR
Trust-SSL introduces an additive-residual approach with trust weights to improve the robustness of self-supervised learning in aerial imagery under severe corruptions, outperforming existing methods.
Contribution
It proposes a novel additive-residual alignment strategy with trust weights, enhancing SSL robustness to corruptions in aerial imagery, and demonstrates superior performance over prior methods.
Findings
Achieves highest mean linear-probe accuracy on EuroSAT, AID, NWPU-RESISC45 datasets.
Significantly improves robustness under severe haze and corruption conditions.
Provides a new design principle for uncertainty-aware self-supervised learning.
Abstract
Self-supervised learning (SSL) is a standard approach for representation learning in aerial imagery. Existing methods enforce invariance between augmented views, which works well when augmentations preserve semantic content. However, aerial images are frequently degraded by haze, motion blur, rain, and occlusion that remove critical evidence. Enforcing alignment between a clean and a severely degraded view can introduce spurious structure into the latent space. This study proposes a training strategy and architectural modification to enhance SSL robustness to such corruptions. It introduces a per-sample, per-factor trust weight into the alignment objective, combined with the base contrastive loss as an additive residual. A stop-gradient is applied to the trust weight instead of a multiplicative gate. While a multiplicative gate is a natural choice, experiments show it impairs the…
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