Aether Exposure - Wan 2.2 t2v LoRA

v1.0 high noise
joachim_s
14 days ago

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πŸ’« Aether Exposure – Double Exposure LoRA for Subjects and Environments (t2v)
Aether Exposure is a first version of a paired LoRA set (low and high noise) that creates layered double exposure compositions β€” blending a human subject with a landscape, city or other background.
Trained specifically for silhouette separation and coherent overlay, it’s ideal for stylized, surreal storytelling sequences focused on people. Also works great to generate single one frames double exposure images. Best compositional output there is.


πŸ’¬ Default Trigger Phrase
Use this exact format to trigger the effect β€” then insert your subject and background context:

double exposure of a [subject] and a [context], [white/black] background


Prompt example: double exposure of a woman and a forest, black background


You can also experiment with different types of motion applied to either the subject or the background context:


Example: double exposure of a turning woman and a panning over a forest, black background


🧠 How to Use (t2v)
β€’ Works best with either black or white backgrounds
β€’ Combine with camera movement (better controlled) motion


βš™οΈ Inference Settings
β€’ Mode: text-to-video (t2v)
β€’ Model: Wan 2.2 14B
β€’ Resolution: 480–1024px (approx. 720p)
β€’ FPS: 16-24
β€’ Steps: 20 (10 steps each low and high noise)
β€’ CFG: 3.5
β€’ Clip length: 3–5 seconds (73–121 frames)


Thanks to @masslevel for contributing videos!


https://tensor.art/u/635897593804625782

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Info

Base model: Wan Video 2.2 T2V-A14B

Latest version (v1.0 high noise): 1 File

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