782 lines
34 KiB
Python
782 lines
34 KiB
Python
from __future__ import annotations
|
|
|
|
import re
|
|
from typing import Any
|
|
|
|
try:
|
|
from . import formatter_input as input_policy
|
|
from . import category_template_metadata as template_metadata_policy
|
|
from .krea_action_context import (
|
|
is_close_foreplay_text as _is_close_foreplay_text,
|
|
is_outercourse_text as _is_outercourse_text,
|
|
normalize_hardcore_detail_density as _normalize_hardcore_detail_density,
|
|
)
|
|
from .hardcore_text_cleanup import (
|
|
sanitize_hardcore_axis_values as _sanitize_hardcore_axis_values,
|
|
sanitize_hardcore_environment_anchors as _sanitize_hardcore_environment_anchors,
|
|
)
|
|
from .krea_cast import (
|
|
cast_prose as _cast_prose,
|
|
label_join as _label_join,
|
|
lowercase_for_inline_join as _lowercase_for_inline_join,
|
|
natural_label_text as _natural_label_text,
|
|
prompt_cast_descriptors as _prompt_cast_descriptors,
|
|
)
|
|
from .krea_clothing import natural_clothing_state as _natural_clothing_state
|
|
from .krea_action_positions import action_position_phrase as _action_position_phrase
|
|
from .krea_actions import hardcore_action_sentence as _hardcore_action_sentence
|
|
from .krea_pov import (
|
|
filter_pov_labeled_clauses as _filter_pov_labeled_clauses,
|
|
merge_labels as _merge_labels,
|
|
pov_camera_phrase as _pov_camera_phrase,
|
|
pov_composition_text as _pov_composition_text,
|
|
pov_labels_from_value as _pov_labels_from_value,
|
|
)
|
|
from .krea_pov_actions import pov_action_phrase as _pov_action_phrase
|
|
from .prompt_hygiene import sanitize_negative_text, sanitize_prose_text
|
|
except ImportError: # Allows local smoke tests with `python -c`.
|
|
import formatter_input as input_policy
|
|
import category_template_metadata as template_metadata_policy
|
|
from krea_action_context import (
|
|
is_close_foreplay_text as _is_close_foreplay_text,
|
|
is_outercourse_text as _is_outercourse_text,
|
|
normalize_hardcore_detail_density as _normalize_hardcore_detail_density,
|
|
)
|
|
from hardcore_text_cleanup import (
|
|
sanitize_hardcore_axis_values as _sanitize_hardcore_axis_values,
|
|
sanitize_hardcore_environment_anchors as _sanitize_hardcore_environment_anchors,
|
|
)
|
|
from krea_cast import (
|
|
cast_prose as _cast_prose,
|
|
label_join as _label_join,
|
|
lowercase_for_inline_join as _lowercase_for_inline_join,
|
|
natural_label_text as _natural_label_text,
|
|
prompt_cast_descriptors as _prompt_cast_descriptors,
|
|
)
|
|
from krea_clothing import natural_clothing_state as _natural_clothing_state
|
|
from krea_action_positions import action_position_phrase as _action_position_phrase
|
|
from krea_actions import hardcore_action_sentence as _hardcore_action_sentence
|
|
from krea_pov import (
|
|
filter_pov_labeled_clauses as _filter_pov_labeled_clauses,
|
|
merge_labels as _merge_labels,
|
|
pov_camera_phrase as _pov_camera_phrase,
|
|
pov_composition_text as _pov_composition_text,
|
|
pov_labels_from_value as _pov_labels_from_value,
|
|
)
|
|
from krea_pov_actions import pov_action_phrase as _pov_action_phrase
|
|
from prompt_hygiene import sanitize_negative_text, sanitize_prose_text
|
|
|
|
|
|
TRIGGER_CANDIDATES = (
|
|
"sxcpinup_coloredpencil",
|
|
"sxcppnl7",
|
|
)
|
|
PROMPT_FIELD_LABELS = input_policy.prompt_field_labels()
|
|
|
|
|
|
def _clean(value: Any) -> str:
|
|
return input_policy.clean_text(value)
|
|
|
|
|
|
def _is_false(value: Any) -> bool:
|
|
if isinstance(value, bool):
|
|
return value is False
|
|
if isinstance(value, str):
|
|
return value.strip().lower() in ("false", "0", "no", "off")
|
|
return False
|
|
|
|
|
|
def _expression_disabled(row: dict[str, Any]) -> bool:
|
|
return bool(row.get("expression_disabled")) or _is_false(row.get("expression_enabled", True))
|
|
|
|
|
|
def _sentence(text: str) -> str:
|
|
text = _clean(text).strip(" ,;")
|
|
if not text:
|
|
return ""
|
|
text = text[:1].upper() + text[1:]
|
|
if text[-1] not in ".!?":
|
|
text += "."
|
|
return text
|
|
|
|
|
|
def _paragraph(parts: list[str]) -> str:
|
|
return " ".join(part for part in (_sentence(part) for part in parts) if part)
|
|
|
|
|
|
def _formatter_hint_parts(*rows: dict[str, Any]) -> list[str]:
|
|
hints: list[str] = []
|
|
for row in rows:
|
|
if not isinstance(row, dict):
|
|
continue
|
|
for hint in template_metadata_policy.formatter_hints_for_route(row, "krea"):
|
|
hint = _clean(hint).strip(" .")
|
|
if hint and hint not in hints:
|
|
hints.append(hint)
|
|
return hints
|
|
|
|
|
|
def _append_formatter_hints(prompt: str, *rows: dict[str, Any]) -> str:
|
|
hints = _formatter_hint_parts(*rows)
|
|
if not hints:
|
|
return prompt
|
|
return _paragraph([prompt, *hints])
|
|
|
|
|
|
def _with_indefinite_article(text: str) -> str:
|
|
text = _clean(text)
|
|
if not text or text.lower().startswith(("a ", "an ")):
|
|
return text
|
|
article = "an" if text[:1].lower() in "aeiou" else "a"
|
|
return f"{article} {text}"
|
|
|
|
|
|
def _maybe_json(text: str) -> dict[str, Any] | None:
|
|
return input_policy.maybe_json(text)
|
|
|
|
|
|
def _row_from_inputs(source_text: str, metadata_json: str, input_hint: str) -> tuple[dict[str, Any] | None, str]:
|
|
return input_policy.row_from_inputs(source_text, metadata_json, input_hint)
|
|
|
|
|
|
def _strip_trigger(text: str, preserve_trigger: bool) -> str:
|
|
return input_policy.strip_trigger_prefix(text, TRIGGER_CANDIDATES, preserve_trigger=preserve_trigger)
|
|
|
|
|
|
def _split_avoid(text: str) -> tuple[str, str]:
|
|
return input_policy.split_avoid(text)
|
|
|
|
|
|
def _prompt_field(text: str, label: str) -> str:
|
|
return input_policy.prompt_field(text, label, field_labels=PROMPT_FIELD_LABELS)
|
|
|
|
|
|
def _row_value(row: dict[str, Any], key: str, labels: tuple[str, ...] = ()) -> str:
|
|
return input_policy.row_value(row, key, labels, field_labels=PROMPT_FIELD_LABELS)
|
|
|
|
|
|
def _body_phrase(body: Any, figure_note: Any = "") -> str:
|
|
body = _clean(body)
|
|
figure_note = _clean(figure_note)
|
|
if not body:
|
|
return figure_note
|
|
if not figure_note:
|
|
return f"{body} figure"
|
|
if "figure" in figure_note.lower():
|
|
return f"{body} build and {figure_note}"
|
|
return f"{body} figure with {figure_note}"
|
|
|
|
|
|
def _single_caption_front(row: dict[str, Any]) -> dict[str, str]:
|
|
caption = _strip_trigger(_clean(row.get("caption")), False)
|
|
if not caption:
|
|
return {}
|
|
subject = _clean(row.get("primary_subject"))
|
|
age = _clean(row.get("age_band") or row.get("age"))
|
|
body = _clean(row.get("body_phrase"))
|
|
if not body:
|
|
body_type = _clean(row.get("body_type") or row.get("body"))
|
|
figure = _clean(row.get("figure"))
|
|
body = _body_phrase(body_type, figure)
|
|
front = f"{subject}, {age}, {body}, "
|
|
if subject in ("woman", "man") and age and body and caption.startswith(front):
|
|
try:
|
|
skin, hair, eyes, _rest = caption[len(front) :].split(", ", 3)
|
|
except ValueError:
|
|
return {}
|
|
return {"body_phrase": body, "skin": skin, "hair": hair, "eyes": eyes}
|
|
return {}
|
|
|
|
|
|
def _combine_negative(*parts: str) -> str:
|
|
cleaned = [_clean(part).strip(" ,.") for part in parts if _clean(part).strip(" ,.")]
|
|
return ", ".join(cleaned)
|
|
|
|
|
|
def _sanitize_scene_text_for_cast(text: Any, labels: list[str]) -> str:
|
|
text = _clean(text)
|
|
if not text:
|
|
return ""
|
|
if len(labels) < 3:
|
|
text = re.sub(r"\s*(?:while|as)\s+another partner watches\b", "", text, flags=re.IGNORECASE)
|
|
text = re.sub(r"\banother partner watches\b", "", text, flags=re.IGNORECASE)
|
|
text = re.sub(r",?\s*\bone partner held between two bodies\b", "", text, flags=re.IGNORECASE)
|
|
text = re.sub(r",?\s*\bthree bodies locked together\b", "", text, flags=re.IGNORECASE)
|
|
text = re.sub(r",?\s*\bthree bodies\b", "", text, flags=re.IGNORECASE)
|
|
text = re.sub(r"\bwith\s*,\s*", "with ", text, flags=re.IGNORECASE)
|
|
text = re.sub(r"\bwhile blowjob\b", "during a blowjob", text, flags=re.IGNORECASE)
|
|
text = re.sub(r"\bfeaturing blowjob\b", "featuring a blowjob", text, flags=re.IGNORECASE)
|
|
text = re.sub(r"\s+,", ",", text)
|
|
text = re.sub(r",\s*,", ",", text)
|
|
text = re.sub(r"\s{2,}", " ", text).strip(" ,")
|
|
return text
|
|
|
|
|
|
def _composition_phrase(
|
|
composition: Any,
|
|
action: str = "",
|
|
prefix: str = "framed as",
|
|
detail_density: str = "balanced",
|
|
) -> str:
|
|
composition = _clean(composition)
|
|
if not composition:
|
|
return ""
|
|
action_lower = _clean(action).lower()
|
|
composition_lower = composition.lower()
|
|
detail_density = _normalize_hardcore_detail_density(detail_density)
|
|
if "first-person underview" in action_lower or "straddling the viewer's face" in action_lower:
|
|
if any(token in composition_lower for token in ("mirror-reflected", "oral scene", "face and body visible")):
|
|
return (
|
|
f"{prefix} close first-person underview with the woman's thighs framing the camera and the oral contact centered"
|
|
)
|
|
if "pov viewer" in action_lower and any(
|
|
token in action_lower
|
|
for token in ("ass raised", "seen from behind", "on all fours", "bent forward", "face-down")
|
|
):
|
|
return (
|
|
f"{prefix} first-person rear-view frame looking down at the woman's raised ass, with foreground hands and rear-entry contact readable"
|
|
)
|
|
oral_pose_tokens = (
|
|
"kneeling oral",
|
|
"side-lying oral",
|
|
"spread-leg oral",
|
|
"standing oral",
|
|
"edge-of-bed oral",
|
|
"face-sitting",
|
|
"sixty-nine",
|
|
"reclining cunnilingus",
|
|
"straddled oral",
|
|
"chair oral",
|
|
)
|
|
if "oral" in action_lower:
|
|
composition_oral_tokens = [token for token in oral_pose_tokens if token in composition_lower]
|
|
if composition_oral_tokens and not any(token in action_lower for token in composition_oral_tokens):
|
|
match = re.search(r"\bwith\s+(.+)$", composition, flags=re.IGNORECASE)
|
|
return f"framed with {match.group(1)}" if match else ""
|
|
if _is_outercourse_text(action_lower):
|
|
return f"{prefix} {composition}"
|
|
position = _action_position_phrase(action)
|
|
close_or_aftermath = any(
|
|
token in composition_lower
|
|
for token in ("close-up", "close crop", "tight", "direct-flash", "subscriber-view", "post-ejaculation", "aftermath")
|
|
)
|
|
if _is_close_foreplay_text(action_lower) and close_or_aftermath:
|
|
return f"{prefix} {composition}, in one continuous first-person close-body frame"
|
|
if position and close_or_aftermath:
|
|
if detail_density == "compact":
|
|
return f"{prefix} {composition}, with the {position} still readable"
|
|
return f"{prefix} {composition}, keeping the {position} and action geography readable"
|
|
return f"{prefix} {composition}"
|
|
|
|
|
|
def _clean_age(age: Any) -> str:
|
|
return _clean(age)
|
|
|
|
|
|
def _age_detail_phrase(age: Any) -> str:
|
|
text = _clean(age)
|
|
text = re.sub(r"\s+adults?$", "", text).strip()
|
|
return text.replace("-year-old", " years old")
|
|
|
|
|
|
def _age_subject(row: dict[str, Any], fallback_subject: str = "adult person") -> str:
|
|
subject = _clean(row.get("subject_phrase") or row.get("primary_subject") or row.get("subject") or fallback_subject)
|
|
age = _clean_age(row.get("age_band") or row.get("age"))
|
|
if row.get("subject_type") == "configured_cast":
|
|
return _clean(row.get("subject_phrase") or subject)
|
|
if subject in ("woman", "man"):
|
|
if age:
|
|
return f"{age} {subject}" if "adult" in age.lower() else f"{age} adult {subject}"
|
|
return f"adult {subject}"
|
|
if age and "adult" not in subject.lower():
|
|
return f"{age} {subject}"
|
|
return subject or fallback_subject
|
|
|
|
|
|
def _appearance_phrase(row: dict[str, Any]) -> str:
|
|
front = _single_caption_front(row)
|
|
parts = [
|
|
_row_value(row, "body_phrase") or front.get("body_phrase"),
|
|
_row_value(row, "skin") or front.get("skin"),
|
|
_row_value(row, "hair") or front.get("hair"),
|
|
_row_value(row, "eyes") or front.get("eyes"),
|
|
]
|
|
return ", ".join(_clean(part) for part in parts if _clean(part))
|
|
|
|
|
|
def _expression_phrase(expression: Any) -> str:
|
|
expression = _clean(expression)
|
|
if not expression:
|
|
return ""
|
|
if ";" in expression or re.search(
|
|
r"\b(?:Woman|Man) [A-Z] has\b|\bthe (?:woman|man) has\b",
|
|
expression,
|
|
flags=re.IGNORECASE,
|
|
):
|
|
return f"Expressions: {expression}"
|
|
return f"with {expression}"
|
|
|
|
|
|
def _camera_phrase(row: dict[str, Any]) -> str:
|
|
directive = _clean(row.get("camera_directive"))
|
|
if directive:
|
|
return directive
|
|
config = row.get("camera_config")
|
|
if isinstance(config, dict):
|
|
detail = _clean(config.get("camera_detail"))
|
|
if detail == "off" or _clean(config.get("camera_mode")) == "disabled":
|
|
return ""
|
|
custom = _clean(config.get("custom_camera_prompt"))
|
|
if custom:
|
|
base = _clean(config.get("camera_mode")).replace("_", " ")
|
|
pieces = [piece for piece in (base, custom) if piece and piece != "standard"]
|
|
return "Camera: " + ", ".join(pieces)
|
|
mode = _clean(config.get("camera_mode")).replace("_", " ")
|
|
shot = _clean(config.get("shot_size")).replace("_", " ")
|
|
angle = _clean(config.get("angle")).replace("_", " ")
|
|
pieces = [piece for piece in (mode, shot, angle) if piece and piece != "auto" and piece != "standard"]
|
|
if pieces:
|
|
return "Camera: " + ", ".join(pieces)
|
|
return ""
|
|
|
|
|
|
def _camera_scene_phrase(row: dict[str, Any]) -> str:
|
|
return _clean(row.get("camera_scene_directive"))
|
|
|
|
|
|
def _camera_phrase_from_config(config: Any) -> str:
|
|
if not isinstance(config, dict):
|
|
return ""
|
|
detail = _clean(config.get("camera_detail"))
|
|
if detail == "off" or _clean(config.get("camera_mode")) == "disabled":
|
|
return ""
|
|
custom = _clean(config.get("custom_camera_prompt"))
|
|
if custom:
|
|
base = _clean(config.get("camera_mode")).replace("_", " ")
|
|
pieces = [piece for piece in (base, custom) if piece and piece != "standard"]
|
|
return "Camera: " + ", ".join(pieces)
|
|
values = [
|
|
_clean(config.get("camera_mode")).replace("_", " "),
|
|
_clean(config.get("shot_size")).replace("_", " "),
|
|
_clean(config.get("angle")).replace("_", " "),
|
|
_clean(config.get("lens")).replace("_", " "),
|
|
_clean(config.get("distance")).replace("_", " "),
|
|
_clean(config.get("orientation")).replace("_", " "),
|
|
_clean(config.get("phone_visibility")).replace("_", " "),
|
|
]
|
|
pieces = [value for value in values if value and value not in ("auto", "standard")]
|
|
if not pieces:
|
|
return ""
|
|
return "Camera: " + ", ".join(pieces)
|
|
|
|
|
|
def _pair_camera_phrase(directive: Any, config: Any, row: dict[str, Any]) -> str:
|
|
directive_text = _clean(directive)
|
|
if directive_text:
|
|
return directive_text
|
|
if isinstance(config, dict) and (
|
|
_clean(config.get("camera_detail")) == "off" or _clean(config.get("camera_mode")) == "disabled"
|
|
):
|
|
return ""
|
|
return _camera_phrase_from_config(config) or _camera_phrase(row)
|
|
|
|
|
|
def _style_phrase(row: dict[str, Any], style_mode: str) -> str:
|
|
if style_mode == "minimal":
|
|
return ""
|
|
if style_mode == "photographic":
|
|
return "realistic creator-shot photography with natural lighting, tactile skin and fabric detail, and clean social-media composition"
|
|
style = _clean(row.get("style"))
|
|
suffix = _clean(row.get("positive_suffix")) or _prompt_field(_clean(row.get("prompt")), "Use")
|
|
if style and suffix:
|
|
return f"{style}; {suffix}"
|
|
return style or suffix
|
|
|
|
|
|
def _couple_clothing_phrase(item: str) -> str:
|
|
item = _clean(item)
|
|
lower = item.lower()
|
|
partner_text = re.sub(r"\bPartner ([AB]) wears\b", r"Partner \1 wearing", item)
|
|
partner_text = re.sub(r"\bPartner ([AB]) has\b", r"Partner \1 with", partner_text)
|
|
if lower.startswith("partner a "):
|
|
return f"The outfits show {partner_text}"
|
|
if lower.startswith(("two ", "paired ", "coordinated ")):
|
|
return f"The outfits are {partner_text}"
|
|
return f"The couple wears {item}"
|
|
|
|
|
|
def _normal_row_to_krea(row: dict[str, Any], detail_level: str, style_mode: str) -> tuple[str, str]:
|
|
subject_type = _clean(row.get("subject_type"))
|
|
primary = _clean(row.get("primary_subject"))
|
|
item = _row_value(row, "item", ("Sexual pose", "Erotic outfit", "Clothing")) or _clean(row.get("custom_item"))
|
|
item = re.sub(r",?\s*(fashion editorial|resort) styling$", "", item, flags=re.IGNORECASE)
|
|
scene = _row_value(row, "scene_text", ("Setting", "Scene")) or _clean(row.get("scene"))
|
|
pose = _row_value(row, "pose", ("Sexual pose", "Pose"))
|
|
expression = ""
|
|
if not _expression_disabled(row):
|
|
expression = _row_value(row, "character_expression_text") or _row_value(row, "expression", ("Facial expressions", "Facial expression"))
|
|
composition = re.sub(r"^vertical\s+", "", _row_value(row, "composition", ("Composition",)), flags=re.IGNORECASE)
|
|
source_composition = re.sub(
|
|
r"^vertical\s+",
|
|
"",
|
|
_clean(row.get("source_composition")) or composition,
|
|
flags=re.IGNORECASE,
|
|
)
|
|
camera = _camera_phrase(row)
|
|
camera_scene = _camera_scene_phrase(row)
|
|
style = _style_phrase(row, style_mode)
|
|
|
|
if subject_type == "configured_cast" or _clean(row.get("cast_summary")):
|
|
subject = _clean(row.get("subject_phrase") or primary or "adult sexual scene")
|
|
cast = _clean(row.get("cast_summary"))
|
|
try:
|
|
women_count = int(row.get("women_count") or 0)
|
|
men_count = int(row.get("men_count") or 0)
|
|
except (TypeError, ValueError):
|
|
women_count = men_count = 0
|
|
cast_descriptor_text = (
|
|
_clean(row.get("cast_descriptor_text"))
|
|
or _prompt_field(_clean(row.get("prompt")), "Characters")
|
|
or _prompt_field(_clean(row.get("prompt")), "Cast descriptors")
|
|
)
|
|
pov_labels = _pov_labels_from_value(row.get("pov_character_labels"))
|
|
if pov_labels:
|
|
camera = ""
|
|
cast_prose, cast_labels = _cast_prose(cast_descriptor_text, omit_labels=pov_labels)
|
|
if not cast_labels and women_count == 1 and men_count == 1:
|
|
cast_labels = ["Woman A", "Man A"]
|
|
cast_labels = _merge_labels(cast_labels, pov_labels)
|
|
expression = _filter_pov_labeled_clauses(expression, pov_labels)
|
|
expression = _natural_label_text(expression, cast_labels)
|
|
composition = _sanitize_hardcore_environment_anchors(composition)
|
|
source_composition = _sanitize_hardcore_environment_anchors(source_composition)
|
|
role_graph = _sanitize_scene_text_for_cast(
|
|
_sanitize_hardcore_environment_anchors(row.get("source_role_graph") or row.get("role_graph")),
|
|
cast_labels,
|
|
)
|
|
item = _sanitize_scene_text_for_cast(_sanitize_hardcore_environment_anchors(item), cast_labels)
|
|
role_graph = _natural_label_text(role_graph, cast_labels)
|
|
item = _natural_label_text(item, cast_labels)
|
|
axis_values = _sanitize_hardcore_axis_values(row.get("item_axis_values"))
|
|
detail_density = _normalize_hardcore_detail_density(row.get("hardcore_detail_density"))
|
|
action = _hardcore_action_sentence(
|
|
role_graph,
|
|
item,
|
|
source_composition,
|
|
axis_values,
|
|
detail_density,
|
|
row.get("action_family"),
|
|
)
|
|
action = _pov_action_phrase(action, pov_labels, role_graph, item, source_composition, axis_values, detail_density)
|
|
output_composition = _pov_composition_text(composition, pov_labels)
|
|
parts = [
|
|
action,
|
|
_pov_camera_phrase(pov_labels),
|
|
cast_prose,
|
|
f"A consensual explicit adult scene with {subject}" if not action else "",
|
|
f"The cast includes {cast}" if cast and not cast_prose and not (women_count == 1 and men_count == 1) else "",
|
|
f"The setting is {scene}" if scene else "",
|
|
camera_scene,
|
|
_expression_phrase(expression),
|
|
_composition_phrase(output_composition, action, "The image is framed as", detail_density),
|
|
camera,
|
|
style if detail_level != "concise" else "",
|
|
]
|
|
return _paragraph(parts), "metadata(configured_cast)"
|
|
|
|
if primary in ("woman", "man") or subject_type in ("woman", "man", "single_any"):
|
|
subject = _age_subject(row, "adult woman")
|
|
appearance = _appearance_phrase(row)
|
|
parts = [
|
|
_with_indefinite_article(subject),
|
|
f"with {appearance}" if appearance else "",
|
|
f"wearing {item}" if item else "",
|
|
f"{pose}" if pose else "",
|
|
f"with {expression}" if expression else "",
|
|
f"in {scene}" if scene else "",
|
|
camera_scene,
|
|
f"framed as {composition}" if composition else "",
|
|
camera,
|
|
style if detail_level != "concise" else "",
|
|
]
|
|
return _paragraph([", ".join(part for part in parts[:6] if part), *parts[6:]]), "metadata(single)"
|
|
|
|
if subject_type == "couple" or primary in ("two women", "two men", "a woman and a man"):
|
|
subject = _clean(row.get("subject_phrase") or primary or "adult couple")
|
|
if subject == "woman and man":
|
|
subject = "a woman and a man"
|
|
ages = _age_detail_phrase(_row_value(row, "age", ("Ages",)) or row.get("age_band"))
|
|
body = _row_value(row, "body", ("Body types",)) or _clean(row.get("body_type"))
|
|
parts = [
|
|
f"An adult couple: {subject}, all visibly adult",
|
|
f"Age detail: {ages}" if ages else "",
|
|
f"Body types: {body}" if body else "",
|
|
_couple_clothing_phrase(item) if item else "",
|
|
f"The pose is {pose}" if pose else "",
|
|
f"The setting is {scene}" if scene else "",
|
|
camera_scene,
|
|
f"Facial expressions are {expression}" if expression else "",
|
|
f"The image is framed as {composition}" if composition else "",
|
|
camera,
|
|
style if detail_level != "concise" else "",
|
|
]
|
|
return _paragraph(parts), "metadata(couple)"
|
|
|
|
subject = _age_subject(row, primary or "adult scene")
|
|
parts = [
|
|
f"{subject}",
|
|
f"featuring {item}" if item else "",
|
|
f"in {scene}" if scene else "",
|
|
camera_scene,
|
|
f"with {expression}" if expression else "",
|
|
f"framed as {composition}" if composition else "",
|
|
camera,
|
|
style if detail_level != "concise" else "",
|
|
]
|
|
return _paragraph(parts), "metadata(generic)"
|
|
|
|
|
|
def _insta_pair_to_krea(row: dict[str, Any], detail_level: str, style_mode: str) -> tuple[str, str, str, str]:
|
|
descriptor = _clean(row.get("shared_descriptor"))
|
|
cast_descriptors = row.get("shared_cast_descriptors")
|
|
if isinstance(cast_descriptors, list):
|
|
cast_descriptor_text = "; ".join(_clean(item) for item in cast_descriptors if _clean(item))
|
|
else:
|
|
cast_descriptor_text = _clean(cast_descriptors)
|
|
cast_descriptor_text = _prompt_cast_descriptors(cast_descriptor_text)
|
|
soft = row.get("softcore_row") if isinstance(row.get("softcore_row"), dict) else {}
|
|
hard = row.get("hardcore_row") if isinstance(row.get("hardcore_row"), dict) else {}
|
|
soft_camera = _pair_camera_phrase(row.get("softcore_camera_directive"), row.get("softcore_camera_config"), soft)
|
|
hard_camera = _pair_camera_phrase(row.get("hardcore_camera_directive"), row.get("hardcore_camera_config"), hard)
|
|
soft_camera_scene = _camera_scene_phrase(soft) or _clean(row.get("softcore_camera_scene_directive"))
|
|
hard_camera_scene = _camera_scene_phrase(hard) or _clean(row.get("hardcore_camera_scene_directive"))
|
|
soft_style = _style_phrase(soft, style_mode)
|
|
hard_style = _style_phrase(hard, style_mode)
|
|
options = row.get("options") if isinstance(row.get("options"), dict) else {}
|
|
soft_level = _clean(options.get("softcore_level")).replace("_", " ")
|
|
hard_level = _clean(options.get("hardcore_level")).replace("_", " ")
|
|
same_room = options.get("continuity") == "same_creator_same_room"
|
|
hard_scene = soft.get("scene_text") if same_room and soft.get("scene_text") else hard.get("scene_text")
|
|
hard_composition = _sanitize_hardcore_environment_anchors(hard.get("composition"))
|
|
hard_source_composition = _sanitize_hardcore_environment_anchors(hard.get("source_composition") or hard_composition)
|
|
pov_labels = _merge_labels(
|
|
_pov_labels_from_value(row.get("pov_character_labels")),
|
|
_pov_labels_from_value(soft.get("pov_character_labels")),
|
|
_pov_labels_from_value(hard.get("pov_character_labels")),
|
|
)
|
|
if pov_labels:
|
|
hard_camera = ""
|
|
if options.get("softcore_cast") == "same_as_hardcore":
|
|
soft_camera = ""
|
|
soft_cast_descriptor_text = (
|
|
cast_descriptor_text
|
|
if options.get("softcore_cast") == "same_as_hardcore"
|
|
else f"Woman A: {descriptor}"
|
|
)
|
|
soft_cast_prose, soft_labels = _cast_prose(
|
|
soft_cast_descriptor_text,
|
|
omit_labels=pov_labels if options.get("softcore_cast") == "same_as_hardcore" else [],
|
|
)
|
|
hard_cast_prose, hard_labels = _cast_prose(cast_descriptor_text, omit_labels=pov_labels)
|
|
soft_labels = _merge_labels(soft_labels, pov_labels if options.get("softcore_cast") == "same_as_hardcore" else [])
|
|
hard_labels = _merge_labels(hard_labels, pov_labels)
|
|
hard_item = _sanitize_scene_text_for_cast(_sanitize_hardcore_environment_anchors(hard.get("item")), hard_labels)
|
|
hard_role_graph = _sanitize_scene_text_for_cast(
|
|
_sanitize_hardcore_environment_anchors(hard.get("source_role_graph") or hard.get("role_graph")),
|
|
hard_labels,
|
|
)
|
|
hard_item = _natural_label_text(hard_item, hard_labels)
|
|
hard_role_graph = _natural_label_text(hard_role_graph, hard_labels)
|
|
hard_axis_values = _sanitize_hardcore_axis_values(hard.get("item_axis_values"))
|
|
hard_detail_density = _normalize_hardcore_detail_density(
|
|
hard.get("hardcore_detail_density") or row.get("hardcore_detail_density") or options.get("hardcore_detail_density")
|
|
)
|
|
hard_action = _hardcore_action_sentence(
|
|
hard_role_graph,
|
|
hard_item,
|
|
hard_source_composition,
|
|
hard_axis_values,
|
|
hard_detail_density,
|
|
hard.get("action_family") or row.get("action_family"),
|
|
)
|
|
hard_action = _pov_action_phrase(
|
|
hard_action,
|
|
pov_labels,
|
|
hard_role_graph,
|
|
hard_item,
|
|
hard_source_composition,
|
|
hard_axis_values,
|
|
hard_detail_density,
|
|
)
|
|
hard_output_composition = _pov_composition_text(hard_composition, pov_labels)
|
|
same_soft_cast = options.get("softcore_cast") == "same_as_hardcore"
|
|
soft_output_composition = _pov_composition_text(soft.get("composition"), pov_labels if same_soft_cast else [])
|
|
if same_soft_cast and pov_labels:
|
|
soft_cast_presence = (
|
|
"the woman is framed from the POV participant's first-person camera in a soft creator-teaser pose, "
|
|
"with the POV participant kept off-camera as the viewpoint and implied by camera position or foreground cues"
|
|
)
|
|
else:
|
|
soft_cast_presence = (
|
|
f"{_label_join(soft_labels)} share the frame in a soft creator-teaser pose"
|
|
if same_soft_cast
|
|
else "The image focuses on the woman alone"
|
|
)
|
|
partner_styling = row.get("softcore_partner_styling")
|
|
if isinstance(partner_styling, dict):
|
|
outfits = partner_styling.get("outfits")
|
|
partner_outfit_text = "; ".join(_clean(item) for item in outfits if _clean(item)) if isinstance(outfits, list) else ""
|
|
partner_pose = _clean(partner_styling.get("pose"))
|
|
else:
|
|
partner_outfit_text = ""
|
|
partner_pose = ""
|
|
partner_outfit_text = _filter_pov_labeled_clauses(partner_outfit_text, pov_labels)
|
|
if pov_labels:
|
|
partner_pose = ""
|
|
partner_outfit_text = _natural_label_text(partner_outfit_text, soft_labels)
|
|
|
|
soft_expression = ""
|
|
if not _expression_disabled(soft):
|
|
soft_expression_source = _filter_pov_labeled_clauses(
|
|
_clean(soft.get("character_expression_text")) or _clean(soft.get("expression")),
|
|
pov_labels,
|
|
)
|
|
soft_expression = _natural_label_text(
|
|
soft_expression_source,
|
|
soft_labels,
|
|
)
|
|
hard_expression = ""
|
|
if not _expression_disabled(hard):
|
|
hard_expression_source = _filter_pov_labeled_clauses(
|
|
_clean(hard.get("character_expression_text")) or _clean(hard.get("expression")),
|
|
pov_labels,
|
|
)
|
|
hard_expression = _natural_label_text(
|
|
hard_expression_source,
|
|
hard_labels,
|
|
)
|
|
soft_item = _clean(soft.get("item"))
|
|
soft_item_label = _clean(soft.get("softcore_item_prompt_label"))
|
|
soft_item_phrase = ""
|
|
if soft_item:
|
|
soft_item_phrase = f"body exposure: {soft_item}" if soft_item_label == "Body exposure" else f"wearing {soft_item}"
|
|
|
|
soft_parts = [
|
|
soft_cast_prose,
|
|
soft_cast_presence,
|
|
partner_outfit_text,
|
|
partner_pose,
|
|
_pov_camera_phrase(pov_labels, softcore=True) if same_soft_cast else "",
|
|
soft_item_phrase,
|
|
f"{soft.get('pose')}" if soft.get("pose") else "",
|
|
_expression_phrase(soft_expression),
|
|
f"in {soft.get('scene_text')}" if soft.get("scene_text") else "",
|
|
soft_camera_scene,
|
|
f"framed as {soft_output_composition}" if soft_output_composition else "",
|
|
soft_camera,
|
|
soft_style if detail_level != "concise" else "",
|
|
]
|
|
hard_parts = [
|
|
hard_action,
|
|
_pov_camera_phrase(pov_labels),
|
|
_natural_label_text(
|
|
_filter_pov_labeled_clauses(_natural_clothing_state(row.get("hardcore_clothing_state"), hard_action), pov_labels),
|
|
hard_labels,
|
|
),
|
|
hard_cast_prose,
|
|
f"set in {hard_scene}" if hard_scene else "",
|
|
hard_camera_scene,
|
|
_expression_phrase(hard_expression),
|
|
_composition_phrase(hard_output_composition, hard_action, detail_density=hard_detail_density),
|
|
hard_camera,
|
|
hard_style if detail_level != "concise" else "",
|
|
]
|
|
return (
|
|
_paragraph(soft_parts),
|
|
_combine_negative(row.get("softcore_negative_prompt")),
|
|
_paragraph(hard_parts),
|
|
_combine_negative(row.get("hardcore_negative_prompt")),
|
|
)
|
|
|
|
|
|
def _fallback_text_to_krea(
|
|
source_text: str,
|
|
preserve_trigger: bool,
|
|
detail_level: str,
|
|
style_mode: str,
|
|
) -> tuple[str, str, str]:
|
|
positive, negative = _split_avoid(_strip_trigger(source_text, preserve_trigger))
|
|
positive = re.sub(r"\b(?:Scene|Setting):", "The setting is", positive)
|
|
positive = re.sub(r"\b(?:Pose|Sexual pose):", "The pose is", positive)
|
|
positive = re.sub(r"\bFacial expressions?:", "The facial expression is", positive)
|
|
positive = re.sub(r"\bComposition:", "The composition is", positive)
|
|
positive = re.sub(r"\bRole graph:", "The role choreography is", positive)
|
|
positive = re.sub(r"\bUse\b", "Use", positive)
|
|
positive = _clean(positive)
|
|
return _paragraph([positive]), negative, "text(fallback)"
|
|
|
|
|
|
def format_krea2_prompt(
|
|
source_text: str,
|
|
metadata_json: str = "",
|
|
negative_prompt: str = "",
|
|
input_hint: str = "auto",
|
|
target: str = "auto",
|
|
detail_level: str = "balanced",
|
|
style_mode: str = "preserve",
|
|
preserve_trigger: bool = False,
|
|
extra_positive: str = "",
|
|
extra_negative: str = "",
|
|
) -> dict[str, str]:
|
|
detail_level = detail_level if detail_level in ("concise", "balanced", "dense") else "balanced"
|
|
style_mode = style_mode if style_mode in ("preserve", "photographic", "minimal") else "preserve"
|
|
target = target if target in ("auto", "single", "softcore", "hardcore") else "auto"
|
|
row, method = _row_from_inputs(source_text, metadata_json, input_hint)
|
|
extracted_negative = ""
|
|
|
|
if row and row.get("mode") == "Insta/OF":
|
|
soft_prompt, soft_negative, hard_prompt, hard_negative = _insta_pair_to_krea(row, detail_level, style_mode)
|
|
soft_row = row.get("softcore_row") if isinstance(row.get("softcore_row"), dict) else {}
|
|
hard_row = row.get("hardcore_row") if isinstance(row.get("hardcore_row"), dict) else {}
|
|
soft_prompt = _append_formatter_hints(soft_prompt, row, soft_row)
|
|
hard_prompt = _append_formatter_hints(hard_prompt, row, hard_row)
|
|
if extra_positive.strip():
|
|
soft_prompt = f"{soft_prompt.rstrip()} {extra_positive.strip()}"
|
|
hard_prompt = f"{hard_prompt.rstrip()} {extra_positive.strip()}"
|
|
soft_prompt = sanitize_prose_text(soft_prompt, triggers=TRIGGER_CANDIDATES)
|
|
hard_prompt = sanitize_prose_text(hard_prompt, triggers=TRIGGER_CANDIDATES)
|
|
selected = hard_prompt if target == "hardcore" else soft_prompt if target == "softcore" else soft_prompt
|
|
selected_negative = hard_negative if target == "hardcore" else soft_negative
|
|
negative = sanitize_negative_text(_combine_negative(selected_negative, negative_prompt, extra_negative))
|
|
return {
|
|
"krea_prompt": selected,
|
|
"negative_prompt": negative,
|
|
"krea_softcore_prompt": soft_prompt,
|
|
"krea_hardcore_prompt": hard_prompt,
|
|
"softcore_negative_prompt": sanitize_negative_text(_combine_negative(soft_negative, extra_negative)),
|
|
"hardcore_negative_prompt": sanitize_negative_text(_combine_negative(hard_negative, extra_negative)),
|
|
"method": f"{method}:krea2(insta_of_pair)",
|
|
}
|
|
|
|
if row:
|
|
prompt, kind = _normal_row_to_krea(row, detail_level, style_mode)
|
|
prompt = _append_formatter_hints(prompt, row)
|
|
extracted_negative = _clean(row.get("negative_prompt"))
|
|
method = f"{method}:krea2({kind})"
|
|
else:
|
|
prompt, extracted_negative, method = _fallback_text_to_krea(source_text, preserve_trigger, detail_level, style_mode)
|
|
|
|
if extra_positive.strip():
|
|
prompt = f"{prompt.rstrip()} {extra_positive.strip()}"
|
|
prompt = sanitize_prose_text(prompt, triggers=TRIGGER_CANDIDATES)
|
|
negative = sanitize_negative_text(_combine_negative(extracted_negative, negative_prompt, extra_negative))
|
|
return {
|
|
"krea_prompt": prompt,
|
|
"negative_prompt": negative,
|
|
"krea_softcore_prompt": "",
|
|
"krea_hardcore_prompt": "",
|
|
"softcore_negative_prompt": "",
|
|
"hardcore_negative_prompt": "",
|
|
"method": method,
|
|
}
|