Enjoy XL_Super Realistic Photography - v5.0lightning
推薦反向提示詞
NSFW, (worst quality:2), (low quality:2), (normal quality:2), lowres, normal quality, ((monochrome)), ((grayscale)), skin spots, acnes, skin blemishes, age spot, (ugly:1.331), (duplicate:1.331), (morbid:1.21), (mutilated:1.21), (tranny:1.331), mutated hands, (poorly drawn hands:1.5), blurry, (bad anatomy:1.21), (bad proportions:1.331), extra limbs, (disfigured:1.331), (missing arms:1.331), (extra legs:1.331), (fused fingers:1.5), (too many fingers:1.5), (unclear eyes:1.331), lowers, bad hands, extra digit, missing fingers, (((extra arms and legs)))
推薦參數
samplers
steps
cfg
clip skip
resolution
vae
推薦高解析度參數
upscaler
upscale
steps
denoising strength
提示
Use CFG scale of 7 for best expressive force and realism.
Recommended sampling steps range from 25 to 30, with 25 steps often producing the best detail.
4x-UltraSharp and SwinIR_4x are recommended upscalers; redrawing amplitude around 0.3-0.6 improves quality.
Opening ADetailer or AD running chart is advised to enhance output quality.
For large size images, use the amplifier upscaler 4x-UltraSharp to address multi-body problems in 2048x2048 resolution images.
版本亮點
This model is different from the past. If you use it,please read the contents carefully:,
This model is a lightning big model pair (text emphasis/CFG Scale) comparison. The larger the inscription value,the higher the saturation. According to the official recommend and the CFG value "2" tested by myself,the expressive force is the most prominent and true,
The recommend range of the sampling step (Sampling steps) is between 10 and 30,and the best value "25" is obtained after the multi-vocabulary test ",
This model fixes and integrates VAE,keeping the VAE status as (None/None) in the running graph,
The amplification algorithm can use 4x-UltraSharp (high-score iteration step number "15"),
Sampling method recommend DPM 2S a,
This model is a multi-class large model can generate a variety of different styles,you can be bold innovation,
This model is different from the past. If you use it,please read the contents carefully:,
This model is a lightning big model pair (text emphasis/CFG Scale) comparison. The larger the inscription value,the higher the saturation. According to the official recommend and the CFG value "2" tested by myself,the expressive force is the most prominent and true,
The recommend range of the sampling step (Sampling steps) is between 10 and 30,and the best value "25" is obtained after the multi-vocabulary test ",
This model fixes and integrates VAE,keeping the VAE status as (None/None) in the running graph,
The amplification algorithm can use 4x-UltraSharp (high-score iteration step number "15"),
Sampling method recommend DPM 2S a,
This model is a multi-class large model can generate a variety of different styles,you can be bold innovation,
Must Read: V8.3 (Dark Photography Edition) belongs to the fine-tuning version, the training of the light shadow texture effect and the whole body hand crash problem to optimize and adjust with the big model fine-tuning synthesis, this model of the sampler to adjust the attention of the sampling ## Restart ##
If you like gray photography texture, you can use this version.
(This version can be used as a base film for training to understand the hands much better, and greatly reduce the crashing problem)
Support for image production (headshots, portraits, half-body, full-body)
Suggested sizes: 768, 1024, 1280, 1536 (2048*2048 images will have multi-body problems, if you want better texture, you can use the amplifier to realize large size images 4x-UltraSharp)
Iterative deployment: (25-30 steps)
Cue word guidance coefficient CFG scale: (7)
Recommended sampling method: Restart
Recommended Zoom Algorithm: 4x-UltraSharp (or) 4x_NMKD-Superscale-SP_178000_G
(Redraw amplitude recommended around 4) (High score iteration steps: 25 steps - 30 steps)
(Local map running - zoomable Recommended 1.5-2x)
About this version
Must Read: In V3, Retraining Using Cog Natural Language TAG Tagging Training
In the large model training set, extract some pictures for LOHR training and integrate them into the large model.
Output image support (headshot, portrait, half-body, full-body)
Iterative deployment: (25-30 steps)
Cue word guidance coefficient CFG scale: (7)
Recommended sampling method: DPM++ 2S a