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Update app.py
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from fastapi import FastAPI, UploadFile, File
from pydantic import BaseModel
from huggingface_hub import hf_hub_download
from keras.models import load_model
from tensorflow.keras.applications.inception_v3 import preprocess_input
from tensorflow.keras.preprocessing.image import img_to_array
import numpy as np
from PIL import Image
import io
import base64
app = FastAPI()
# Lista de clases
class_names = ['acanthoica', 'akashiwo', 'alexandrium', 'amoeba', 'amphidinium', 'amylax', 'apedinella',
'asterionellopsis', 'bacillaria', 'bacteriastrum', 'biddulphia', 'calciopappus', 'cerataulina',
'ceratium', 'chaetoceros', 'chrysochromulina', 'cochlodinium', 'corethron', 'corymbellus',
'coscinodiscus', 'cryptophyta', 'cylindrotheca', 'dactyliosolen', 'delphineis', 'dictyocha',
'dinobryon', 'dinophysis', 'ditylum', 'emiliania', 'ephemera', 'eucampia', 'euglena',
'gonyaulax', 'guinardia', 'gyrodinium', 'hemiaulus', 'heterocapsa', 'karenia', 'katodinium',
'kryptoperidinium', 'laboea', 'lauderia', 'leptocylindrus', 'licmophora', 'nanoneis',
'odontella', 'ophiaster', 'ostreopsis', 'oxytoxum', 'paralia', 'parvicorbicula', 'phaeocystis',
'pleuronema', 'pleurosigma', 'polykrikos', 'prorocentrum', 'proterythropsis', 'protoperidinium',
'pseudo-nitzschia', 'pseudochattonella', 'pyramimonas', 'rhabdolithes', 'rhizosolenia',
'scrippsiella', 'skeletonema', 'stephanopyxis', 'syracosphaera', 'thalassionema', 'thalassiosira',
'trichodesmium', 'vicicitus', 'warnowia']
# Descargar y cargar el modelo desde Hugging Face Hub
model_path = hf_hub_download(repo_id="Daniel00611/InceptionV3_72", filename="InceptionV3_72.keras")
model = load_model(model_path)
def preprocess_image(img, target_size=(299, 299)):
# Convertir a RGB si la imagen no está en ese formato
if img.mode != "RGB":
img = img.convert("RGB")
img = img.resize(target_size)
img_array = img_to_array(img)
img_array = np.expand_dims(img_array, axis=0)
img_array = preprocess_input(img_array)
return img_array
# Modelo para recibir múltiples imágenes en Base64
class ImagesBase64(BaseModel):
images_base64: list[str] # Lista de imágenes en formato Base64
# Ruta para imágenes subidas como archivo
@app.post("/predict/")
async def predict(file: UploadFile = File(...)):
try:
# Leer la imagen subida
img = Image.open(io.BytesIO(await file.read()))
img_array = preprocess_image(img)
# Realizar predicción
predictions = model.predict(img_array)[0]
# Obtener el top 10 de predicciones
top_10_indices = predictions.argsort()[-10:][::-1]
top_10_classes = [class_names[i] for i in top_10_indices]
top_10_probabilities = predictions[top_10_indices]
# Formar respuesta en formato JSON
result = [{"class": top_10_classes[i], "probability": float(top_10_probabilities[i])} for i in range(10)]
return {"predictions": result}
except Exception as e:
return {"error": str(e)}
# Ruta para imágenes en formato Base64
@app.post("/predict_base64/")
async def predict_base64(image_data: ImagesBase64):
results = {}
try:
for index, image_base64 in enumerate(image_data.images_base64):
# Decodificar cada imagen Base64
image_bytes = base64.b64decode(image_base64)
img = Image.open(io.BytesIO(image_bytes))
img_array = preprocess_image(img)
# Realizar predicción
predictions = model.predict(img_array)[0]
# Obtener el top 10 de predicciones
top_10_indices = predictions.argsort()[-10:][::-1]
top_10_classes = [class_names[i] for i in top_10_indices]
top_10_probabilities = predictions[top_10_indices]
# Formar respuesta para la imagen actual
image_result = [{"class": top_10_classes[i], "probability": float(top_10_probabilities[i])} for i in range(10)]
results[f"imagen{index + 1}"] = image_result
return results
except Exception as e:
return {"error": str(e)}
@app.get("/")
def greet_json():
return {"Hello": "World!"}