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Geometric Decoupling: Diagnosing the Structural Instability of Latent

Published 20 Apr 2026 in cs.CV and cs.AI | (2604.18804v1)

Abstract: Latent Diffusion Models (LDMs) achieve high-fidelity synthesis but suffer from latent space brittleness, causing discontinuous semantic jumps during editing. We introduce a Riemannian framework to diagnose this instability by analyzing the generative Jacobian, decomposing geometry into \textit{Local Scaling} (capacity) and \textit{Local Complexity} (curvature). Our study uncovers a \textbf{Geometric Decoupling"}: while curvature in normal generation functionally encodes image detail, OOD generation exhibits a functional decoupling where extreme curvature is wasted on unstable semantic boundaries rather than perceptible details. This geometric misallocation identifiesGeometric Hotspots" as the structural root of instability, providing a robust intrinsic metric for diagnosing generative reliability.

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