wan2.1 pixar style
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wan2.1 pixar style
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Toy figurine

Accentuation

Composition

wan2.1 pixar style

Pixar Animation Style LoRA for Wan2.1 14B T2V

Overview

This LoRA is trained on the Wan2.1 14B T2V model and allows you to generate videos in Pixar animation style!

Features

  • Trained on the Wan2.1 14B T2V base model
  • Consistent results across different object types
  • Simple prompt structure that's easy to adapt

p1x4r_5ty13 Pixar animation style A small brown puppy with floppy ears sits on a grassy hill, tilting its head curiously at a floating dandelion seed drifting past. Its big, round eyes shine in the soft golden light of the setting sun. The background features rolling hills and a wooden fence.

This model is sourced from an external transfer (transfer address: https://huggingface.co/Remade-AI/Pixar ),if the original author has objections to this transfer, you can click,
Appeal
We will, within 24 hours, edit, delete, or transfer the model to the original author according to the original author's request

angela rose

angela rose

Toy figurine

Accentuation

Composition

Model Information

Model Type:
LoRA
Basic Model:
WAN2.1
Trigger Words:
p1x4r_5ty13

Pixar Animation Style LoRA for Wan2.1 14B T2V

Overview

This LoRA is trained on the Wan2.1 14B T2V model and allows you to generate videos in Pixar animation style!

Features

  • Trained on the Wan2.1 14B T2V base model
  • Consistent results across different object types
  • Simple prompt structure that's easy to adapt

p1x4r_5ty13 Pixar animation style A small brown puppy with floppy ears sits on a grassy hill, tilting its head curiously at a floating dandelion seed drifting past. Its big, round eyes shine in the soft golden light of the setting sun. The background features rolling hills and a wooden fence.

This model is sourced from an external transfer (transfer address: https://huggingface.co/Remade-AI/Pixar ),if the original author has objections to this transfer, you can click,
Appeal
We will, within 24 hours, edit, delete, or transfer the model to the original author according to the original author's request