SDXL Refiner, Detailer and Upscaler with LoraManager
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Model description
SDXL Refiner Workflow
A streamlined SDXL Image to Image refinement workflow featuring integrated LoRA management, checkpoint refinement, and intelligent face/skin detailing.
Core Features
LoRA Manager Integration
The workflow includes a comprehensive LoRA management system with trigger word control:
TriggerWord Toggle - Enables selective activation/deactivation of individual LoRA trigger words
Trigger word filtering - Dynamically filters active trigger words based on toggle state
Multiple LoRA support with independent trigger word management
Direct integration with CLIP conditioning for consistent prompt application
Refiner Checkpoint System
Dedicated refiner checkpoint loading with independent model control:
Uses a separate checkpoint loader specifically for the refiner pass
VAE routing system for consistent encoding/decoding across the pipeline
Supports SDXL refiner checkpoints (example: fluxRefiner_v11.safetensors)
Independent MODEL, CLIP, and VAE outputs for flexible workflow routing
FaceDetailer Integration
Intelligent facial and skin detail enhancement using Impact Pack nodes:
Face Detection - UltralyticsDetectorProvider with face_yolov8n_v2.pt for precise facial bounding boxes
Skin Segmentation - Segmentation detector using skin_yolov8n-seg_800.pt for targeted skin areas
SAM Integration - SAMLoader (sam_vit_b_01ec64.pth) for advanced masking and detail isolation
Combined bbox detection and segmentation for comprehensive facial enhancement
Direct integration with the refiner pass for seamless detail processing
Workflow Structure
The workflow processes images through a sequential refinement pipeline:
Initial Processing - Image resize and VAE encoding preparation
LoRA Application - Trigger word filtering and LoRA weight application
Refiner Pass - Dedicated checkpoint refinement with conditioning
Detail Enhancement - Face/skin detection and targeted detail improvement
Output - Dual save points for refiner output and upscaled results
Technical Specifications
Image Resize Node - ImageResizeKJv2 with configurable dimensions (1024x1024 default)
Upscale Support - Integrated upscale model loader with post-refiner upscaling
Metadata Preservation - SaveImageWithMetaData nodes maintain full generation parameters
VAE Management - Centralized VAE routing using ReroutePrimitive for consistency
Output Options
The workflow provides two distinct save points:
Refiner Output - Direct refined results at base resolution
Refiner Upscale - Enhanced upscaled version with preserved details
Both outputs include complete metadata embedding for reproducibility and workflow tracking.
Usage Notes
This workflow is designed for refinement of existing images or latent spaces. The LoRA manager provides granular control over trigger word activation, allowing you to fine-tune which style elements are applied during the refinement pass. The integrated detailer specifically targets facial features and skin areas for enhanced realism and detail without affecting the overall composition.






