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bvandeusen 8af9f12544 fix(ml): tolerate truncated images in WD14 and SigLIP preprocess
PIL's strict load was raising OSError on images missing the trailing
end-of-stream marker (e.g. '6 bytes not processed' on a JPEG without
its FF D9 EOI), failing the entire ML task for an image the model
could otherwise score fine. Set ImageFile.LOAD_TRUNCATED_IMAGES = True
in both ML modules so a minutely-corrupt tail doesn't block tagging
or embedding.

Co-Authored-By: Claude Opus 4.7 <noreply@anthropic.com>
2026-04-25 22:35:03 -04:00

117 lines
4.1 KiB
Python

"""WD14 EVA02-Large tagger (ONNX CPU inference)."""
from __future__ import annotations
import csv
import os
from typing import Iterable
import numpy as np
import onnxruntime as ort
from PIL import Image, ImageFile
# Some images in the library are minutely truncated (e.g. 6 bytes short of
# the JPEG end-of-image marker). The model doesn't care about the last few
# pixels, but PIL's default strict load raises OSError. Tolerate them so a
# single corrupt tail doesn't block tagging the rest of the image.
ImageFile.LOAD_TRUNCATED_IMAGES = True
MODEL_VERSION = os.environ.get('WD14_MODEL_VERSION', 'wd-eva02-large-tagger-v3')
_MODEL_DIR = os.environ.get('ML_MODEL_DIR', '/models')
_WD14_DIR = os.path.join(_MODEL_DIR, 'wd14')
_MODEL_PATH = os.path.join(_WD14_DIR, 'model.onnx')
_TAGS_PATH = os.path.join(_WD14_DIR, 'selected_tags.csv')
# WD14 selected_tags.csv uses Danbooru category ids:
# 0=general, 1=artist, 3=copyright, 4=character, 5=meta, 9=rating
_CATEGORY_MAP = {0: 'general', 1: 'artist', 3: 'copyright', 4: 'character', 5: 'meta', 9: 'rating'}
_session: ort.InferenceSession | None = None
_tag_meta: list[dict] | None = None
_input_name: str | None = None
_output_name: str | None = None
_input_size: int = 448
# NOT thread-safe. Must run in the ml-worker container with --concurrency=1.
def _load() -> None:
global _session, _tag_meta, _input_name, _output_name, _input_size
if _session is not None:
return
if not os.path.isfile(_MODEL_PATH):
raise RuntimeError(
f"WD14 model file missing at {_MODEL_PATH}. "
f"Populate the /models volume via the ml-worker downloader."
)
if not os.path.isfile(_TAGS_PATH):
raise RuntimeError(
f"WD14 selected_tags.csv missing at {_TAGS_PATH}. "
f"Populate the /models volume via the ml-worker downloader."
)
tag_meta: list[dict] = []
with open(_TAGS_PATH, newline='') as f:
reader = csv.DictReader(f)
for row in reader:
tag_meta.append({
'name': row['name'],
'category': _CATEGORY_MAP.get(int(row['category']), 'unknown'),
})
session = ort.InferenceSession(
_MODEL_PATH,
providers=['CPUExecutionProvider'],
)
_input_name = session.get_inputs()[0].name
_output_name = session.get_outputs()[0].name
# Input shape is usually [batch, H, W, 3] NHWC; pick the spatial dim
input_shape = session.get_inputs()[0].shape
for dim in input_shape:
if isinstance(dim, int) and dim > 1:
_input_size = dim
break
# Assign sentinels last so a partially-loaded state can't be observed.
_tag_meta = tag_meta
_session = session
def _preprocess(image_path: str) -> np.ndarray:
img = Image.open(image_path)
if img.mode != 'RGBA':
img = img.convert('RGBA')
# Composite onto white background so transparency doesn't bias the model
bg = Image.new('RGBA', img.size, (255, 255, 255, 255))
bg.paste(img, mask=img.split()[3] if img.mode == 'RGBA' else None)
img = bg.convert('RGB')
w, h = img.size
side = max(w, h)
square = Image.new('RGB', (side, side), (255, 255, 255))
square.paste(img, ((side - w) // 2, (side - h) // 2))
square = square.resize((_input_size, _input_size), Image.BICUBIC)
arr = np.array(square, dtype=np.float32)
# WD14 was trained on BGR
arr = arr[:, :, ::-1]
return arr[np.newaxis, :, :, :] # NHWC
def infer(image_path: str) -> list[dict]:
"""Run WD14 on one image. Returns a list of {name, category, confidence}."""
_load()
x = _preprocess(image_path)
out = _session.run([_output_name], {_input_name: x})[0][0]
results: list[dict] = []
for idx, score in enumerate(out):
meta = _tag_meta[idx]
results.append({
'name': meta['name'],
'category': meta['category'],
'confidence': float(score),
})
return results
def infer_filtered(image_path: str, min_any: float = 0.05) -> list[dict]:
"""Same as infer() but drops tags below a floor to keep DB rows reasonable."""
return [r for r in infer(image_path) if r['confidence'] >= min_any]