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Custom Inference Handler for Document Classifier.
HF Inference Endpoints call EndpointHandler.
"""
import time
import io
import base64
import numpy as np
import cv2
import torch
import torch.nn as nn
import torch.nn.functional as F
from PIL import Image
from torchvision import models, transforms
NUM_CLASSES = 3
LABEL_MAP = {"text_document": 0, "wound": 1, "clinical_medical": 2}
LABEL_NAMES = {v: k for k, v in LABEL_MAP.items()}
IMG_SIZE = 224
IMAGENET_MEAN = [0.485, 0.456, 0.406]
IMAGENET_STD = [0.229, 0.224, 0.225]
ROUTE_MAP = {
"text_document": "ocr",
"wound": "wound_care",
"clinical_medical": "clinical",
}
DISPLAY_NAMES = {
"text_document": "Text Document",
"wound": "Wound Image",
"clinical_medical": "Clinical / Medical Image",
}
ROUTE_DISPLAY = {
"ocr": "OCR Text Extraction",
"wound_care": "Wound Care Pipeline",
"clinical": "Clinical LLM Analysis",
"both_medical": "Wound Care + Clinical LLM",
"all": "All Pipelines (Review Needed)",
}
MEDICAL_LABELS = {"wound", "clinical_medical"}
CNN_HIGH = 0.92
CNN_MED = 0.75
HEUR_MIN = 0.55
class DocumentClassifierCNN(nn.Module):
def __init__(self):
super().__init__()
self.backbone = models.efficientnet_b0(weights=None)
in_features = self.backbone.classifier[1].in_features
self.backbone.classifier = nn.Sequential(
nn.Dropout(p=0.3), nn.Linear(in_features, NUM_CLASSES),
)
def forward(self, x):
return self.backbone(x)
def predict_proba(self, x):
with torch.no_grad():
return F.softmax(self.forward(x), dim=-1)
val_transform = transforms.Compose([
transforms.Resize((IMG_SIZE, IMG_SIZE)),
transforms.ToTensor(),
transforms.Normalize(mean=IMAGENET_MEAN, std=IMAGENET_STD),
])
# ββ Heuristics βββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββ
def _sat_score(bgr):
hsv = cv2.cvtColor(bgr, cv2.COLOR_BGR2HSV)
return float(1.0 - min(hsv[:, :, 1].mean() / 80.0, 1.0))
def _edge_score(bgr):
g = cv2.cvtColor(bgr, cv2.COLOR_BGR2GRAY)
s = cv2.resize(g, (512, 512))
h = np.abs(cv2.Sobel(s, cv2.CV_64F, 1, 0, ksize=3)).sum()
v = np.abs(cv2.Sobel(s, cv2.CV_64F, 0, 1, ksize=3)).sum()
t = h + v
return float(min(max((v / t - 0.45) / 0.15, 0), 1)) if t > 1e-6 else 0.5
def _white_score(bgr):
g = cv2.cvtColor(bgr, cv2.COLOR_BGR2GRAY)
return float(min(np.sum(g > 220) / g.size / 0.5, 1.0))
def _comp_score(bgr):
g = cv2.cvtColor(bgr, cv2.COLOR_BGR2GRAY)
s = cv2.resize(g, (512, 512))
_, b = cv2.threshold(s, 0, 255, cv2.THRESH_BINARY_INV + cv2.THRESH_OTSU)
n, _, stats, _ = cv2.connectedComponentsWithStats(b, 8)
if n <= 1:
return 0.5
a = stats[1:, cv2.CC_STAT_AREA]
return float(min(np.sum((a > 5) & (a < 500)) / (512 * 512 / 100) / 3.0, 1.0))
def _warm_ratio(bgr):
hsv = cv2.cvtColor(bgr, cv2.COLOR_BGR2HSV)
h, s, v = hsv[:, :, 0], hsv[:, :, 1], hsv[:, :, 2]
m = ((h < 25) | (h > 165)) & (s > 30) & (v > 40)
return float(min(m.sum() / h.size / 0.3, 1.0))
def _gray_dom(bgr):
hsv = cv2.cvtColor(bgr, cv2.COLOR_BGR2HSV)
return float(1.0 - min(hsv[:, :, 1].mean() / 30.0, 1.0))
def _dark_bg(bgr):
g = cv2.cvtColor(bgr, cv2.COLOR_BGR2GRAY)
return float(min(np.sum(g < 30) / g.size / 0.3, 1.0))
def heuristic_classify(bgr):
s1 = {
"sat": _sat_score(bgr), "edge": _edge_score(bgr),
"white": _white_score(bgr), "comp": _comp_score(bgr),
}
combined = s1["sat"] * 0.30 + s1["edge"] * 0.15 + s1["white"] * 0.35 + s1["comp"] * 0.20
if combined >= 0.50:
conf = min((combined - 0.50) / 0.50 * 0.5 + 0.5, 1.0)
return "text_document", conf
warm = _warm_ratio(bgr)
gray = _gray_dom(bgr)
dark = _dark_bg(bgr)
w_sig = warm * 0.50 + (1 - gray) * 0.20 + (1 - dark) * 0.30
c_sig = gray * 0.30 + dark * 0.30 + (1 - warm) * 0.40
if w_sig > c_sig:
conf = min(0.5 + (w_sig - c_sig) * 2, 1.0)
return "wound", conf
conf = min(0.5 + (c_sig - w_sig) * 2, 1.0)
return "clinical_medical", conf
# ββ Ensemble βββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββββ
def ensemble(cnn_label, cnn_conf, heur_label, heur_conf):
agree = cnn_label == heur_label
if agree and cnn_conf >= CNN_HIGH and heur_conf >= HEUR_MIN:
return cnn_label, ROUTE_MAP[cnn_label], min(cnn_conf, heur_conf), False
if agree and cnn_conf >= CNN_MED:
return cnn_label, ROUTE_MAP[cnn_label], cnn_conf * 0.9, False
cnn_med = cnn_label in MEDICAL_LABELS
heur_med = heur_label in MEDICAL_LABELS
if cnn_med and heur_med and cnn_label != heur_label:
pri = cnn_label if cnn_conf >= heur_conf else heur_label
return pri, "both_medical", max(cnn_conf, heur_conf) * 0.6, cnn_conf < 0.6
if cnn_med != heur_med:
pri = cnn_label if cnn_conf >= 0.6 else heur_label
return pri, "all", max(cnn_conf, heur_conf) * 0.4, True
pri = cnn_label if cnn_conf >= 0.5 else heur_label
route = ROUTE_MAP.get(pri, "all") if cnn_conf >= CNN_MED else "all"
return pri, route, max(cnn_conf, heur_conf) * 0.5, cnn_conf < 0.6
# ββ HF Inference Endpoint Handler ββββββββββββββββββββββββββββββββββββββββββββ
class EndpointHandler:
def __init__(self, path=""):
import os
model_path = os.path.join(path, "best_model.pth")
self.device = torch.device("cuda" if torch.cuda.is_available() else "cpu")
self.model = DocumentClassifierCNN()
ckpt = torch.load(model_path, map_location=self.device, weights_only=False)
self.model.load_state_dict(ckpt["model_state_dict"])
self.model.to(self.device)
self.model.eval()
def __call__(self, data):
inputs = data.get("inputs", data)
if isinstance(inputs, dict) and "image" in inputs:
img_data = inputs["image"]
elif isinstance(inputs, str):
img_data = inputs
else:
img_data = inputs
if isinstance(img_data, str):
image_bytes = base64.b64decode(img_data)
pil = Image.open(io.BytesIO(image_bytes)).convert("RGB")
elif isinstance(img_data, bytes):
pil = Image.open(io.BytesIO(img_data)).convert("RGB")
elif isinstance(img_data, Image.Image):
pil = img_data.convert("RGB")
else:
return {"error": f"Unsupported input type: {type(img_data)}"}
t0 = time.time()
tensor = val_transform(pil).unsqueeze(0).to(self.device)
probs = self.model.predict_proba(tensor).squeeze(0).cpu()
cnn_pred = probs.argmax().item()
cnn_label = LABEL_NAMES[cnn_pred]
cnn_conf = probs[cnn_pred].item()
img_np = np.array(pil)
bgr = cv2.cvtColor(img_np, cv2.COLOR_RGB2BGR)
heur_label, heur_conf = heuristic_classify(bgr)
label, route, conf, review = ensemble(cnn_label, cnn_conf, heur_label, heur_conf)
elapsed = (time.time() - t0) * 1000
class_probs = {LABEL_NAMES[i]: round(probs[i].item(), 4) for i in range(NUM_CLASSES)}
return {
"label": label,
"label_display": DISPLAY_NAMES.get(label, label),
"route": route,
"route_display": ROUTE_DISPLAY.get(route, route),
"confidence": round(conf, 4),
"class_probabilities": class_probs,
"cnn_label": cnn_label,
"cnn_confidence": round(cnn_conf, 4),
"heuristic_label": heur_label,
"heuristic_confidence": round(heur_conf, 4),
"needs_review": review,
"inference_ms": round(elapsed, 1),
}
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