Categories: Image

Qwen Edit – Sharing prompts: Rotate camera – shot from behind

I’v been trying different prompt to get a 180 camera rotation, but just got subject rotation, so i tried 90 degrees angles and it worked, there are 3 prompt type:
A. Turn the camera 90 degrees to the left/right (depending on the photo one work best)
B. Turn the camera 90 degrees to the left/right, side/back body shot of the subject (in some photo work best that prompt)

C. Turn the camera 90 degrees to the left/right, Turn the image 90 degrees to the left/right (this work more consistently for me, mixing with some of the above)

Instruction:

  1. With your front shot image, use whatever prompt from above work best for you

  2. when you get you side image now use that as the base and use the prompt again.

  3. try changing description of the subject if something is not right. Enjoy

FYI: some images works best than other, you may add some details of the subject, but the more words the less it seems to work, adding details like: the street is the vanishing point, can help side shot

Tested with qwen 2509, lightning8stepsV2 lora, (Next Scene lora optional).

FYI2: the prompt can be improve, mixed etc, share your findings and results.

The key is in short prompts

submitted by /u/Vortexneonlight
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