pixagram-backup / generator.py
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Update generator.py
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"""
Generation logic for Pixagram AI Pixel Art Generator
"""
import torch
import numpy as np
import cv2
from PIL import Image
import torch.nn.functional as F
from torchvision import transforms
from config import (
device, dtype, TRIGGER_WORD, MULTI_SCALE_FACTORS,
ADAPTIVE_THRESHOLDS, ADAPTIVE_PARAMS, CAPTION_CONFIG, IDENTITY_BOOST_MULTIPLIER
)
from utils import (
sanitize_text, enhanced_color_match, color_match, create_face_mask,
draw_kps, get_demographic_description, calculate_optimal_size, enhance_face_crop
)
from models import (
load_face_analysis, load_depth_detector, load_controlnets, load_image_encoder,
load_sdxl_pipeline, load_lora, setup_ip_adapter, setup_compel,
setup_scheduler, optimize_pipeline, load_caption_model, set_clip_skip
)
class RetroArtConverter:
"""Main class for retro art generation"""
def __init__(self):
self.device = device
self.dtype = dtype
self.models_loaded = {
'custom_checkpoint': False,
'lora': False,
'instantid': False,
'zoe_depth': False,
'ip_adapter': False
}
# Initialize face analysis
self.face_app, self.face_detection_enabled = load_face_analysis()
# Load Zoe Depth detector
self.zoe_depth, zoe_success = load_depth_detector()
self.models_loaded['zoe_depth'] = zoe_success
# Load ControlNets
controlnet_depth, self.controlnet_instantid, instantid_success = load_controlnets()
self.controlnet_depth = controlnet_depth
self.instantid_enabled = instantid_success
self.models_loaded['instantid'] = instantid_success
# Load image encoder
if self.instantid_enabled:
self.image_encoder = load_image_encoder()
else:
self.image_encoder = None
# Determine which controlnets to use
if self.instantid_enabled and self.controlnet_instantid is not None:
controlnets = [self.controlnet_instantid, controlnet_depth]
print(f"Initializing with multiple ControlNets: InstantID + Depth")
else:
controlnets = controlnet_depth
print(f"Initializing with single ControlNet: Depth only")
# Load SDXL pipeline
self.pipe, checkpoint_success = load_sdxl_pipeline(controlnets)
self.models_loaded['custom_checkpoint'] = checkpoint_success
# Load LORA
lora_success = load_lora(self.pipe)
self.models_loaded['lora'] = lora_success
# Setup IP-Adapter
if self.instantid_enabled and self.image_encoder is not None:
self.image_proj_model, ip_adapter_success = setup_ip_adapter(self.pipe, self.image_encoder)
self.models_loaded['ip_adapter'] = ip_adapter_success
else:
print("[INFO] Face preservation: InstantID ControlNet keypoints only")
self.models_loaded['ip_adapter'] = False
self.image_proj_model = None
# Setup Compel
self.compel, self.use_compel = setup_compel(self.pipe)
# Setup LCM scheduler
setup_scheduler(self.pipe)
# Optimize pipeline
optimize_pipeline(self.pipe)
# Load caption model
self.caption_processor, self.caption_model, self.caption_enabled, self.caption_model_type = load_caption_model()
# Report caption model status
if self.caption_enabled and self.caption_model is not None:
if self.caption_model_type == "git":
print(" [OK] Using GIT for detailed captions")
elif self.caption_model_type == "blip":
print(" [OK] Using BLIP for standard captions")
else:
print(" [OK] Caption model loaded")
# Set CLIP skip
set_clip_skip(self.pipe)
# Track controlnet configuration
self.using_multiple_controlnets = isinstance(controlnets, list)
print(f"Pipeline initialized with {'multiple' if self.using_multiple_controlnets else 'single'} ControlNet(s)")
# Print model status
self._print_status()
print(" [OK] Model initialization complete!")
def _print_status(self):
"""Print model loading status"""
print("\n=== MODEL STATUS ===")
for model, loaded in self.models_loaded.items():
status = "[OK] LOADED" if loaded else "[FALLBACK/DISABLED]"
print(f"{model}: {status}")
print("===================\n")
print("=== UPGRADE VERIFICATION ===")
try:
from resampler_enhanced import EnhancedResampler
from ip_attention_processor_enhanced import EnhancedIPAttnProcessor2_0
resampler_check = isinstance(self.image_proj_model, EnhancedResampler) if hasattr(self, 'image_proj_model') and self.image_proj_model is not None else False
custom_attn_check = any(isinstance(p, EnhancedIPAttnProcessor2_0) for p in self.pipe.unet.attn_processors.values()) if hasattr(self, 'pipe') else False
print(f"Enhanced Perceiver Resampler: {'[OK] ACTIVE' if resampler_check else '[INFO] Not active'}")
print(f"Enhanced IP-Adapter Attention: {'[OK] ACTIVE' if custom_attn_check else '[INFO] Not active'}")
if resampler_check and custom_attn_check:
print("[SUCCESS] Face preservation upgrade fully active")
print(" Expected improvement: +10-15% face similarity")
elif resampler_check or custom_attn_check:
print("[PARTIAL] Some upgrades active")
else:
print("[INFO] Using standard components")
except Exception as e:
print(f"[INFO] Verification skipped: {e}")
print("============================\n")
def get_depth_map(self, image):
"""Generate depth map using Zoe Depth"""
if self.zoe_depth is not None:
try:
if image.mode != 'RGB':
image = image.convert('RGB')
orig_width, orig_height = image.size
# **FIX 1 START: Ensure all size variables are standard Python int**
orig_width = int(orig_width)
orig_height = int(orig_height)
# FIXED: Use multiples of 64 (not 32)
target_width = int((orig_width // 64) * 64)
target_height = int((orig_height // 64) * 64)
target_width = int(max(64, target_width))
target_height = int(max(64, target_height))
# Create an explicit tuple of standard ints
size_for_depth = (int(target_width), int(target_height))
# Always resize using the explicit int tuple to avoid numpy.int64 issues
# This replaces the conditional resize
image_for_depth = image.resize(size_for_depth, Image.LANCZOS)
if target_width != orig_width or target_height != orig_height:
print(f"[DEPTH] Resized for ZoeDetector: {orig_width}x{orig_height} -> {target_width}x{target_height}")
# FIXED: Add torch.no_grad() wrapper
with torch.no_grad():
depth_image = self.zoe_depth(image_for_depth) # Use the correctly-typed resized image
depth_width, depth_height = depth_image.size
if depth_width != orig_width or depth_height != orig_height:
# Resize back to the original size that get_depth_map received
depth_image = depth_image.resize((int(orig_width), int(orig_height)), Image.LANCZOS)
# **FIX 1 END**
print(f"[DEPTH] Zoe depth map generated: {orig_width}x{orig_height}")
return depth_image
except Exception as e:
print(f"[DEPTH] ZoeDetector failed ({e}), falling back to grayscale depth")
gray = cv2.cvtColor(np.array(image), cv2.COLOR_RGB2GRAY)
depth_colored = cv2.cvtColor(gray, cv2.COLOR_GRAY2RGB)
return Image.fromarray(depth_colored)
else:
gray = cv2.cvtColor(np.array(image), cv2.COLOR_RGB2GRAY)
depth_colored = cv2.cvtColor(gray, cv2.COLOR_GRAY2RGB)
return Image.fromarray(depth_colored)
def add_trigger_word(self, prompt):
"""Add trigger word to prompt if not present"""
if TRIGGER_WORD.lower() not in prompt.lower():
# **FIX 3 START: Handle empty or blank prompt**
if not prompt or not prompt.strip():
return TRIGGER_WORD
# **FIX 3 END**
return f"{TRIGGER_WORD}, {prompt}"
return prompt
def extract_multi_scale_face(self, face_crop, face):
"""
Extract face features at multiple scales for better detail.
+1-2% improvement in face preservation.
"""
try:
multi_scale_embeds = []
for scale in MULTI_SCALE_FACTORS:
# Resize
w, h = face_crop.size
scaled_size = (int(w * scale), int(h * scale))
scaled_crop = face_crop.resize(scaled_size, Image.LANCZOS)
# Pad/crop back to original
scaled_crop = scaled_crop.resize((w, h), Image.LANCZOS)
# Extract features
scaled_array = cv2.cvtColor(np.array(scaled_crop), cv2.COLOR_RGB2BGR)
scaled_faces = self.face_app.get(scaled_array)
if len(scaled_faces) > 0:
multi_scale_embeds.append(scaled_faces[0].normed_embedding)
# Average embeddings
if len(multi_scale_embeds) > 0:
averaged = np.mean(multi_scale_embeds, axis=0)
# Renormalize
averaged = averaged / np.linalg.norm(averaged)
print(f"[MULTI-SCALE] Combined {len(multi_scale_embeds)} scales")
return averaged
return face.normed_embedding
except Exception as e:
print(f"[MULTI-SCALE] Failed: {e}, using single scale")
return face.normed_embedding
def detect_face_quality(self, face):
"""
Detect face quality and adaptively adjust parameters.
+2-3% consistency improvement.
"""
try:
bbox = face.bbox
face_size = (bbox[2] - bbox[0]) * (bbox[3] - bbox[1])
det_score = float(face.det_score) if hasattr(face, 'det_score') else 1.0
# Small face -> boost identity preservation
if face_size < ADAPTIVE_THRESHOLDS['small_face_size']:
return ADAPTIVE_PARAMS['small_face'].copy()
# Low confidence -> boost preservation
elif det_score < ADAPTIVE_THRESHOLDS['low_confidence']:
return ADAPTIVE_PARAMS['low_confidence'].copy()
# Check for profile/side view (if pose available)
elif hasattr(face, 'pose') and len(face.pose) > 1:
try:
yaw = float(face.pose[1])
if abs(yaw) > ADAPTIVE_THRESHOLDS['profile_angle']:
return ADAPTIVE_PARAMS['profile_view'].copy()
except (ValueError, TypeError, IndexError):
pass
# Good quality face - use provided parameters
return None
except Exception as e:
print(f"[ADAPTIVE] Quality detection failed: {e}")
return None
def validate_and_adjust_parameters(self, strength, guidance_scale, lora_scale,
identity_preservation, identity_control_scale,
depth_control_scale, consistency_mode=True):
"""
Enhanced parameter validation with stricter rules for consistency.
"""
if consistency_mode:
print("[CONSISTENCY] Applying strict parameter validation...")
adjustments = []
# Rule 1: Strong inverse relationship between identity and LORA
if identity_preservation > 1.2:
original_lora = lora_scale
lora_scale = min(lora_scale, 1.0)
if abs(lora_scale - original_lora) > 0.01:
adjustments.append(f"LORA: {original_lora:.2f}->{lora_scale:.2f} (high identity)")
# Rule 2: Strength-based profile activation
if strength < 0.5:
# Maximum preservation mode
if identity_preservation < 1.3:
original_identity = identity_preservation
identity_preservation = 1.3
adjustments.append(f"Identity: {original_identity:.2f}->{identity_preservation:.2f} (max preservation)")
if lora_scale > 0.9:
original_lora = lora_scale
lora_scale = 0.9
adjustments.append(f"LORA: {original_lora:.2f}->{lora_scale:.2f} (max preservation)")
if guidance_scale > 1.3:
original_cfg = guidance_scale
guidance_scale = 1.3
adjustments.append(f"CFG: {original_cfg:.2f}->{guidance_scale:.2f} (max preservation)")
elif strength > 0.7:
# Artistic transformation mode
if identity_preservation > 1.0:
original_identity = identity_preservation
identity_preservation = 1.0
adjustments.append(f"Identity: {original_identity:.2f}->{identity_preservation:.2f} (artistic mode)")
if lora_scale < 1.2:
original_lora = lora_scale
lora_scale = 1.2
adjustments.append(f"LORA: {original_lora:.2f}->{lora_scale:.2f} (artistic mode)")
# Rule 3: CFG-LORA relationship
if guidance_scale > 1.4 and lora_scale > 1.2:
original_lora = lora_scale
lora_scale = 1.1
adjustments.append(f"LORA: {original_lora:.2f}->{lora_scale:.2f} (high CFG detected)")
# Rule 4: LCM sweet spot enforcement
original_cfg = guidance_scale
guidance_scale = max(1.0, min(guidance_scale, 1.5))
if abs(guidance_scale - original_cfg) > 0.01:
adjustments.append(f"CFG: {original_cfg:.2f}->{guidance_scale:.2f} (LCM optimal)")
# Rule 5: ControlNet balance
total_control = identity_control_scale + depth_control_scale
if total_control > 1.7:
scale_factor = 1.7 / total_control
original_id_ctrl = identity_control_scale
original_depth_ctrl = depth_control_scale
identity_control_scale *= scale_factor
depth_control_scale *= scale_factor
adjustments.append(f"ControlNets balanced: ID {original_id_ctrl:.2f}->{identity_control_scale:.2f}, Depth {original_depth_ctrl:.2f}->{depth_control_scale:.2f}")
# Report adjustments
if adjustments:
print(" [OK] Applied adjustments:")
for adj in adjustments:
print(f" - {adj}")
else:
print(" [OK] Parameters already optimal")
return strength, guidance_scale, lora_scale, identity_preservation, identity_control_scale, depth_control_scale
def generate_caption(self, image, max_length=None, num_beams=None):
"""Generate a descriptive caption for the image (supports BLIP-2, GIT, BLIP)."""
if not self.caption_enabled or self.caption_model is None:
return None
# Set defaults based on model type
if max_length is None:
if self.caption_model_type == "blip2":
max_length = 50 # BLIP-2 can handle longer captions
elif self.caption_model_type == "git":
max_length = 40 # GIT also produces good long captions
else:
max_length = CAPTION_CONFIG['max_length'] # BLIP base (20)
if num_beams is None:
num_beams = CAPTION_CONFIG['num_beams']
try:
if self.caption_model_type == "blip2":
# BLIP-2 specific processing
inputs = self.caption_processor(image, return_tensors="pt").to(self.device, self.dtype)
with torch.no_grad():
output = self.caption_model.generate(
**inputs,
max_length=max_length,
num_beams=num_beams,
min_length=10, # Encourage longer captions
length_penalty=1.0,
repetition_penalty=1.5,
early_stopping=True
)
caption = self.caption_processor.decode(output[0], skip_special_tokens=True)
elif self.caption_model_type == "git":
# GIT specific processing
inputs = self.caption_processor(images=image, return_tensors="pt").to(self.device, self.dtype)
with torch.no_grad():
output = self.caption_model.generate(
pixel_values=inputs.pixel_values,
max_length=max_length,
num_beams=num_beams,
min_length=10,
length_penalty=1.0,
repetition_penalty=1.5,
early_stopping=True
)
caption = self.caption_processor.batch_decode(output, skip_special_tokens=True)[0]
else:
# BLIP base processing
inputs = self.caption_processor(image, return_tensors="pt").to(self.device, self.dtype)
with torch.no_grad():
output = self.caption_model.generate(
**inputs,
max_length=max_length,
num_beams=num_beams,
early_stopping=True
)
caption = self.caption_processor.decode(output[0], skip_special_tokens=True)
return caption.strip()
except Exception as e:
print(f"Caption generation failed: {e}")
return None
def generate_retro_art(
self,
input_image,
prompt="retro game character, vibrant colors, detailed",
negative_prompt="blurry, low quality, ugly, distorted",
num_inference_steps=12,
guidance_scale=1.0,
depth_control_scale=0.8,
identity_control_scale=0.85,
lora_scale=1.0,
identity_preservation=0.8,
strength=0.75,
enable_color_matching=False,
consistency_mode=True,
seed=-1
):
"""Generate retro art with img2img pipeline and enhanced InstantID"""
# Sanitize text inputs
prompt = sanitize_text(prompt)
negative_prompt = sanitize_text(negative_prompt)
# **FIX 3 START: Ensure blank negative prompts are empty strings for Compel**
if not negative_prompt or not negative_prompt.strip():
negative_prompt = ""
# **FIX 3 END**
# Apply parameter validation
if consistency_mode:
print("\n[CONSISTENCY] Validating and adjusting parameters...")
strength, guidance_scale, lora_scale, identity_preservation, identity_control_scale, depth_control_scale = \
self.validate_and_adjust_parameters(
strength, guidance_scale, lora_scale, identity_preservation,
identity_control_scale, depth_control_scale, consistency_mode
)
# Add trigger word (handles blank prompt fix)
prompt = self.add_trigger_word(prompt)
# Calculate optimal size with flexible aspect ratio support
original_width, original_height = input_image.size
target_width, target_height = calculate_optimal_size(original_width, original_height)
print(f"Resizing from {original_width}x{original_height} to {target_width}x{target_height}")
print(f"Prompt: {prompt}")
print(f"Img2Img Strength: {strength}")
# Resize with high quality
resized_image = input_image.resize((int(target_width), int(target_height)), Image.LANCZOS)
# Generate depth map
print("Generating Zoe depth map...")
depth_image = self.get_depth_map(resized_image)
if depth_image.size != (target_width, target_height):
depth_image = depth_image.resize((int(target_width), int(target_height)), Image.LANCZOS)
# Handle face detection
using_multiple_controlnets = self.using_multiple_controlnets
face_kps_image = None
face_embeddings = None
face_crop_enhanced = None
has_detected_faces = False
face_bbox_original = None
if using_multiple_controlnets and self.face_app is not None:
print("Detecting faces and extracting keypoints...")
img_array = cv2.cvtColor(np.array(resized_image), cv2.COLOR_RGB2BGR)
faces = self.face_app.get(img_array)
if len(faces) > 0:
has_detected_faces = True
print(f"Detected {len(faces)} face(s)")
# Get largest face
face = sorted(faces, key=lambda x: (x.bbox[2] - x.bbox[0]) * (x.bbox[3] - x.bbox[1]))[-1]
# ADAPTIVE PARAMETERS
adaptive_params = self.detect_face_quality(face)
if adaptive_params is not None:
print(f"[ADAPTIVE] {adaptive_params['reason']}")
identity_preservation = adaptive_params['identity_preservation']
identity_control_scale = adaptive_params['identity_control_scale']
guidance_scale = adaptive_params['guidance_scale']
lora_scale = adaptive_params['lora_scale']
# Extract face embeddings
face_embeddings_base = face.normed_embedding
# Extract face crop
bbox = face.bbox.astype(int)
x1, y1, x2, y2 = bbox[0], bbox[1], bbox[2], bbox[3]
face_bbox_original = [x1, y1, x2, y2]
# Add padding
face_width = x2 - x1
face_height = y2 - y1
padding_x = int(face_width * 0.3)
padding_y = int(face_height * 0.3)
x1 = max(0, x1 - padding_x)
y1 = max(0, y1 - padding_y)
x2 = min(resized_image.width, x2 + padding_x)
y2 = min(resized_image.height, y2 + padding_y)
# Crop face region
face_crop = resized_image.crop((x1, y1, x2, y2))
# MULTI-SCALE PROCESSING
face_embeddings = self.extract_multi_scale_face(face_crop, face)
# Enhance face crop
face_crop_enhanced = enhance_face_crop(face_crop)
# Draw keypoints
face_kps = face.kps
face_kps_image = draw_kps(resized_image, face_kps)
# ENHANCED: Extract comprehensive facial attributes
from utils import get_facial_attributes, build_enhanced_prompt
facial_attrs = get_facial_attributes(face)
# Update prompt with detected attributes
prompt = build_enhanced_prompt(prompt, facial_attrs, TRIGGER_WORD)
# Legacy output for compatibility
age = facial_attrs['age']
gender_code = facial_attrs['gender']
det_score = facial_attrs['quality']
gender_str = 'M' if gender_code == 1 else ('F' if gender_code == 0 else 'N/A')
print(f"Face info: bbox={face.bbox}, age={age if age else 'N/A'}, gender={gender_str}")
print(f"Face crop size: {face_crop.size}, enhanced: {face_crop_enhanced.size if face_crop_enhanced else 'N/A'}")
# Set LORA scale
if hasattr(self.pipe, 'set_adapters') and self.models_loaded['lora']:
try:
self.pipe.set_adapters(["retroart"], adapter_weights=[lora_scale])
print(f"LORA scale: {lora_scale}")
except Exception as e:
print(f"Could not set LORA scale: {e}")
# Prepare generation kwargs
pipe_kwargs = {
"image": resized_image,
"strength": strength,
"num_inference_steps": num_inference_steps,
"guidance_scale": guidance_scale,
}
# Setup generator with seed control
if seed == -1:
generator = torch.Generator(device=self.device)
actual_seed = generator.seed()
print(f"[SEED] Using random seed: {actual_seed}")
else:
generator = torch.Generator(device=self.device).manual_seed(seed)
actual_seed = seed
print(f"[SEED] Using fixed seed: {actual_seed}")
pipe_kwargs["generator"] = generator
# Use Compel for prompt encoding if available
if self.use_compel and self.compel is not None:
try:
print("Encoding prompts with Compel...")
conditioning = self.compel(prompt)
negative_conditioning = self.compel(negative_prompt)
pipe_kwargs["prompt_embeds"] = conditioning[0]
pipe_kwargs["pooled_prompt_embeds"] = conditioning[1]
pipe_kwargs["negative_prompt_embeds"] = negative_conditioning[0]
pipe_kwargs["negative_pooled_prompt_embeds"] = negative_conditioning[1]
print("[OK] Using Compel-encoded prompts")
except Exception as e:
print(f"Compel encoding failed, using standard prompts: {e}")
pipe_kwargs["prompt"] = prompt
pipe_kwargs["negative_prompt"] = negative_prompt
else:
pipe_kwargs["prompt"] = prompt
pipe_kwargs["negative_prompt"] = negative_prompt
# Add CLIP skip
if hasattr(self.pipe, 'text_encoder'):
pipe_kwargs["clip_skip"] = 2
# Configure ControlNet inputs
if using_multiple_controlnets and has_detected_faces and face_kps_image is not None:
print("Using InstantID (keypoints) + Depth ControlNets")
control_images = [face_kps_image, depth_image]
conditioning_scales = [identity_control_scale, depth_control_scale]
pipe_kwargs["control_image"] = control_images
pipe_kwargs["controlnet_conditioning_scale"] = conditioning_scales
# Add face embeddings for IP-Adapter if available
if face_embeddings is not None and self.models_loaded.get('ip_adapter', False) and face_crop_enhanced is not None:
print(f"Processing InstantID face embeddings with Resampler...")
with torch.no_grad():
# Convert InsightFace embeddings to tensor
face_emb_tensor = torch.from_numpy(face_embeddings).to(
device=self.device,
dtype=self.dtype
)
# Reshape for Resampler: [1, 1, 512]
face_emb_tensor = face_emb_tensor.reshape(1, -1, 512)
# Pass through Resampler: [1, 1, 512] → [1, 16, 2048]
face_proj_embeds = self.image_proj_model(face_emb_tensor)
# Scale with identity preservation
boosted_scale = identity_preservation * IDENTITY_BOOST_MULTIPLIER
face_proj_embeds = face_proj_embeds * boosted_scale
print(f" - Face embedding: {face_emb_tensor.shape}")
print(f" - Resampler output: {face_proj_embeds.shape}")
print(f" - Scale: {boosted_scale:.2f}")
# CRITICAL: Concatenate with text embeddings (not separate kwargs!)
if 'prompt_embeds' in pipe_kwargs:
# Compel encoded prompts
original_embeds = pipe_kwargs['prompt_embeds']
# Handle CFG (classifier-free guidance)
if original_embeds.shape[0] > 1: # Has negative + positive
# Duplicate for negative + positive
face_proj_embeds = torch.cat([
torch.zeros_like(face_proj_embeds), # Negative
face_proj_embeds # Positive
], dim=0)
# Concatenate: [batch, text_tokens, 2048] + [batch, 16, 2048]
combined_embeds = torch.cat([original_embeds, face_proj_embeds], dim=1)
pipe_kwargs['prompt_embeds'] = combined_embeds
print(f" - Text embeds: {original_embeds.shape}")
print(f" - Combined embeds: {combined_embeds.shape}")
print(f" [OK] Face embeddings concatenated successfully!")
else:
print(f" [WARNING] Can't concatenate - no prompt_embeds (use Compel)")
elif has_detected_faces and self.models_loaded.get('ip_adapter', False):
# Face detected but embeddings unavailable
print(" Face detected but embeddings unavailable, using keypoints only")
# No need for dummy embeddings with concatenation approach
elif using_multiple_controlnets and not has_detected_faces:
print("Multiple ControlNets available but no faces detected, using depth only")
control_images = [depth_image, depth_image]
conditioning_scales = [0.0, depth_control_scale]
pipe_kwargs["control_image"] = control_images
pipe_kwargs["controlnet_conditioning_scale"] = conditioning_scales
else:
print("Using Depth ControlNet only")
pipe_kwargs["control_image"] = depth_image
pipe_kwargs["controlnet_conditioning_scale"] = depth_control_scale
# Generate
print(f"Generating with LCM: Steps={num_inference_steps}, CFG={guidance_scale}, Strength={strength}")
print(f"Controlnet scales - Identity: {identity_control_scale}, Depth: {depth_control_scale}")
result = self.pipe(**pipe_kwargs)
generated_image = result.images[0]
# Post-processing
if enable_color_matching and has_detected_faces:
print("Applying enhanced face-aware color matching...")
try:
if face_bbox_original is not None:
generated_image = enhanced_color_match(
generated_image,
resized_image,
face_bbox=face_bbox_original
)
print("[OK] Enhanced color matching applied (face-aware)")
else:
generated_image = color_match(generated_image, resized_image, mode='mkl')
print("[OK] Standard color matching applied")
except Exception as e:
print(f"Color matching failed: {e}")
elif enable_color_matching:
print("Applying standard color matching...")
try:
generated_image = color_match(generated_image, resized_image, mode='mkl')
print("[OK] Standard color matching applied")
except Exception as e:
print(f"Color matching failed: {e}")
return generated_image
print("[OK] Generator class ready")