Type | |
Stats | 280 0 |
Reviews | (51) |
Published | Mar 21, 2025 |
Base Model | |
Usage Tips | Strength: 1 |
Trigger Words | kxsr |
Hash | AutoV2 627E2DE8AB |
KXSR First-Person Flight Concept LorA for WAN 2.1 14B and 1.3B T2V
In collaboration with @machinedelusions [https://civitai.com/user/machinedelusions]
KXSR Labs presents:
This LoRA enables the creation of cinematic first-person perspective flying. The hands can be customized in the prompt provided or omitted from the prompt for raw forward camera movement. The typical view will be from a first-person perspective with dynamic movement in horizontal aspect ratio generation. Can still create fun results at other aspect ratios/resolutions.
Use the trigger word "kxsr" to activate the model's specialized training.
Prompt Format
kxsr, [flying in first-person perspective/a person flying in first-person perspective] [broad description of landscape] [describe visible body parts (hands/fists)] [describe movement direction and speed] [describe additional environmental details encountered during flight]
Example Prompts
kxsr, a person flying in first-person perspective through a raging forest fire, the camera descends through burning trees with smoke and ash rising into the sky
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kxsr, a person flying in first-person perspective through an underwater atlantis city, mermaid hands with painted fingernails visible, the camera descends into bubbling water and zooms through the sunken ornate ruins
Recommended Settings
CFG: 4
Shift value: 4.0
LoRA strength: 1.0
~73 frames
720x1280 horizontal aspect ratio
Technical Details
Base model: WAN 2.1 14B and 1.3B Text2Video
Training dataset: 62 clips
Resolution: 1280 x 720 (horizontal format)
Frame count: 73 frames per clip
For optimal results, maintain these specifications during inference
This LoRA works best when you provide detailed descriptions of both the subject and the surrounding environment while following the prescribed format.
Screenshot shows my typical inference testing setup for lora evals: