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Diffusion Contrastive Reconstruction

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DirectAudioEdit: Inversion-Free Text-Guided Audio Editing via Diffusion Prediction Contrast

Announce Type: new Abstract: Text-guided audio editing aims to modify the language-specified acoustic content while preserving edit-irrelevant source components. Existing training-free methods typically rely on inversion-based editing. While inversion-free editing is appealing as it decreases computational overhead and reconstruction errors, it remains largely unexplored for audio editing.

arXiv CS 2d ago

Adjoint-based Perfusion Estimation from Dynamic Contrast-Enhanced Ultrasound: Advection-Diffusion and Two-Compartment Models

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Diff-CA: Separating Common and Salient Factors with Diffusion Models

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VITO: Vascular Geometry and Blood Flow Estimation Using Inverse Topology Optimization

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RISE: Single Static Radar-based Indoor Scene Understanding

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Inverting the Generation Process of Denoising Diffusion Implicit Models: Empirical Evaluation and a Novel Method

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Whole-genome duplication shaped cell-type evolution in the vertebrate brain

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