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Realistic Vision V5 Openpose

lucataco

AI model preview image
The Realistic Vision V5 with OpenPose model is an image-to-image AI model. It takes a seed number, an image URL, and specific parameters like width, height, prompt, guidance, steps, scheduler, and negative prompts as input. The input image is then transformed based on the provided instructions (prompt), while trying to avoid features specified in the negative prompt. The model outputs a new, modified image which is meant to be realistic and high-quality. This model specifically seems to be intended for detailed transformation of human figures (given the use of OpenPose, which is for pose estimation in images), but could potentially be used for other subjects too. The output is represented through the output URL.
Image-to-Image

Pricing

Cost per run
$-
USD
Avg run time
-
Seconds
Hardware
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Prediction

Creator Models

ModelCostRuns
Mistrallite$?619
Realvisxl2 Lora Inference$?1,987
Wizardcoder 15b V1$?459
Vicuna 13b V1.3$?3,554
Wizardcoder Python 34b V1.0$?830

Similar Models

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You can use this area to play around with demo applications that incorporate the Realistic Vision V5 Openpose model. These demos are maintained and hosted externally by third-party creators. If you see an error, message me on Twitter.

Currently, there are no demos available for this model.

Overview

Summary of this model and related resources.

PropertyValue
Creatorlucataco
Model NameRealistic Vision V5 Openpose
Description
Realistic Vision V5 with OpenPose
TagsImage-to-Image
Model LinkView on Replicate
API SpecView on Replicate
Github LinkView on Github
Paper LinkNo paper link provided

Popularity

How popular is this model, by number of runs? How popular is the creator, by the sum of all their runs?

PropertyValue
Runs4,958
Model Rank
Creator Rank

Cost

How much does it cost to run this model? How long, on average, does it take to complete a run?

PropertyValue
Cost per Run$-
Prediction Hardware-
Average Completion Time-