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June 9, 2026OpenVideoMaker TeamUpdated June 9, 2026

How to turn an image into a video: a complete guide

Learn how to use image-to-video workflows in OpenVideoMaker with Seedance, Veo, Kling, and Wan models.

Image-to-video is the most practical AI video workflow. Start with a still image, then add motion with a video model. This guide walks through the full process in OpenVideoMaker.

Step 1: Generate a reference frame

Use an image model (GPT Image 2, Seedream, Imagen, or others) to create your starting frame. Focus on subject, composition, and lighting — the video model will handle motion later.

Step 2: Choose a video model

Upload the reference image to a video model. Each model has different strengths:

  • Seedance: Up to 9 reference images, 3 reference videos, 6 aspect ratios including 21:9. Best for multi-reference and cinematic motion.
  • Veo: Generates audio alongside video. Best for cinematic shots with sound cues and camera language.
  • Kling: First and last frame control, reference video support, 3 quality tiers. Best for controlled transitions and reference-guided output.
  • Wan 2.7: Prompt Extend for automatic prompt expansion, first and last frames. Best when you want the model to fill in prompt details.

Step 3: Write a motion prompt

Focus on motion, camera movement, and atmosphere — not on re-describing the image. The reference image already defines the frame.

Example prompts

Product:

The camera slowly pushes in, soft light moves across the product surface, subtle reflections shift, premium commercial mood

Character:

Gentle head turn toward camera, natural blinking, soft ambient light, subtle hair movement

Landscape:

Slow camera pan to the right, clouds drift gently, sunlight shifts across the scene, peaceful atmosphere

Key takeaway

The key to image-to-video is separation of concerns: image models handle the frame, video models handle the motion.