API improvements #4
@ -1,48 +1,58 @@
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from io import BytesIO
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import torch
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import torch.nn.functional as F
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import numpy as np
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from PIL import Image
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from torchvision.models.resnet import resnet50, ResNet50_Weights
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from torchvision.transforms import transforms
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model = resnet50(weights=ResNet50_Weights.DEFAULT)
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model.eval()
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# Define the image transformations
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preprocess = transforms.Compose([
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transforms.Resize(256),
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transforms.CenterCrop(224),
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transforms.ToTensor(),
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transforms.Normalize(mean=[0.485, 0.456, 0.406], std=[0.229, 0.224, 0.225]),
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])
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from keras.src.applications.resnet import preprocess_input, decode_predictions
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from keras.applications.resnet import ResNet50
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def is_cat(image):
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"""
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Recognition file.
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Model is ResNet50. Pretrained model to image recognition.
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If model recognize cat then returns response with first ten CAT predictions.
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If first prediction is not a cat then returns False.
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If prediction is not a cat (is not within list_of_labels) then skips this prediction.
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Format of response:
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{
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'label': {label}
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'score': {score}
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}
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"""
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model = ResNet50(weights='imagenet')
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# PRIVATE Preprocess image method
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def _preprocess_image(image):
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try:
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img = Image.open(BytesIO(image.read()))
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# Preprocess the image
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img_t = preprocess(img)
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batch_t = torch.unsqueeze(img_t, 0)
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# Make the prediction
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out = model(batch_t)
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# Apply softmax to get probabilities
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probabilities = F.softmax(out, dim=1)
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# Get the maximum predicted class and its probability
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max_prob, max_class = torch.max(probabilities, dim=1)
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max_prob = max_prob.item()
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max_class = max_class.item()
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# Check if the maximum predicted class is within the range 281-285
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if 281 <= max_class <= 285:
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return max_class, max_prob
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else:
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return max_class, None
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img = img.resize((224, 224))
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img_array = np.array(img)
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img_array = np.expand_dims(img_array, axis=0)
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img_array = preprocess_input(img_array)
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return img_array
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except Exception as e:
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print("Error while processing the image:", e)
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print(f"Error preprocessing image: {e}")
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return None
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# Generate response
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def _generate_response(decoded_predictions, list_of_labels):
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results = {}
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for i, (imagenet_id, label, score) in enumerate(decoded_predictions):
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if i == 0 and label not in list_of_labels:
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return None
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if score < 0.01:
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break
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if label in list_of_labels:
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results[len(results) + 1] = {"label": label, "score": round(float(score), 2)}
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return results
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# Cat detection
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def detect_cat(image_file, list_of_labels):
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img_array = _preprocess_image(image_file)
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prediction = model.predict(img_array)
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decoded_predictions = decode_predictions(prediction, top=10)[0]
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return _generate_response(decoded_predictions, list_of_labels)
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9
docs.md
9
docs.md
@ -1,9 +0,0 @@
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# Api
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Port -> 5000
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endpoint -> /detect-cat
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Key -> 'Image'
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Value -> {UPLOADED_FILE}
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53
docs/docs.md
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53
docs/docs.md
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# Api
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Port -> 5000
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endpoint -> api/v1/detect-cat
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Key -> 'Image'
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Value -> {UPLOADED_FILE}
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Flask Rest API application to cat recognition.
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If request is valid then send response with results of recognition.
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If key named 'Image' in body does not occur then returns 400 (BAD REQUEST).
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Otherwise, returns 200 with results of recognition.
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Format of response:
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```json
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{
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"lang": "{users_lang}",
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"results": {
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"{filename}": {
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"isCat": "{is_cat}",
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"results": {
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"1": "{result}",
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"2": "{result}",
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"3": "{result}",
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"4": "{result}",
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"5": "{result}",
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"6": "{result}",
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"7": "{result}",
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"8": "{result}",
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"9": "{result}",
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"10": "{result}"
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}
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}
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},
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"errors": [
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"{error_message}",
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"{error_message}"
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]
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}
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```
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Format of result:
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```json
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{
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"label": "{label}",
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"score": "{score}"
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}
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```
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Example response:
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```json
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```
|
Before Width: | Height: | Size: 204 KiB After Width: | Height: | Size: 204 KiB |
Before Width: | Height: | Size: 105 KiB After Width: | Height: | Size: 105 KiB |
Before Width: | Height: | Size: 7.1 KiB After Width: | Height: | Size: 7.1 KiB |
26
language_label_mapper.py
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26
language_label_mapper.py
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from jproperties import Properties
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"""
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Translator method.
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If everything fine then returns translated labels.
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Else throws an Exception and returns untranslated labels.
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"""
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def translate(to_translate, lang):
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try:
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config = Properties()
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# Load properties file for given lang
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with open(f"resources/{lang}.properties", 'rb') as config_file:
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config.load(config_file, encoding='UTF-8')
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# Translate labels for given to_translate dictionary
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for index, label_info in to_translate.items():
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label = label_info.get("label")
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to_translate[index]["label"] = config.get(label).data
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return to_translate, None
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except Exception as e:
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error_message = f"Error translating labels: {e}"
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print(error_message)
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return to_translate, error_message
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112
main.py
112
main.py
@ -1,37 +1,105 @@
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from flask import Flask, request, jsonify, session
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from flask import Flask, request, Response, json
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from cat_detection import detect_cat
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from language_label_mapper import translate
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from validator import validate
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"""
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Flask Rest API application to cat recognition.
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If request is valid then send response with results of recognition.
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If key named 'Image' in body does not occurred then returns 400 (BAD REQUEST).
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Otherwise returns 200 with results of recognition.
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Format of response:
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{
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"lang": {users_lang},
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"results": {
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{filename}: {
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"isCat": {is_cat},
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"results": {
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"1": {result}
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"2": {result}
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"3": {result}
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...
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"10" {result}
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}
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},
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...
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},
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errors[
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{error_message},
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{error_message},
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...
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]
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}
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To see result format -> cat_detection.py
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"""
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from cat_detection import is_cat
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# Define flask app
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app = Flask(__name__)
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app.secret_key = 'secret_key'
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# Available cats
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list_of_labels = [
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'lynx',
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'lion',
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'tiger',
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'cheetah',
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'leopard',
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'jaguar',
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'tabby',
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'Egyptian_cat',
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'cougar',
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'Persian_cat',
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'Siamese_cat',
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'snow_leopard',
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'tiger_cat'
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]
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@app.route('/detect-cat', methods=['POST'])
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# Available languages
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languages = {'pl', 'en'}
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@app.route('/api/v1/detect-cat', methods=['POST'])
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def upload_file():
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# 'Key' in body should be named as 'image'. Type should be 'File' and in 'Value' we should upload image from disc.
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file = request.files['image']
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if file.filename == '':
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return jsonify({'error': "File name is empty. Please name a file."}), 400
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max_class, max_prob = is_cat(file)
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# Validate request
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error_messages = validate(request)
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# Save result in session
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session['result'] = max_class, max_prob
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# If any errors occurred, return 400 (BAD REQUEST)
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if len(error_messages) > 0:
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errors = json.dumps(
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{
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'errors': error_messages
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}
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)
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return Response(errors, status=400, mimetype='application/json')
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# Tworzenie komunikatu na podstawie wyniku analizy zdjęcia
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translator = {
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281: "tabby cat",
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282: "tiger cat",
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283: "persian cat",
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284: "siamese cat",
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285: "egyptian cat"
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# Get files from request
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files = request.files.getlist('image')
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# Get user's language (Value in header 'Accept-Language'). Default value is English
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lang = request.accept_languages.best_match(languages, default='en')
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# Define JSON structure for results
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results = {
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'lang': lang,
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'results': {},
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'errors': []
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}
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if max_prob is not None:
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result = f"The image is recognized as '{translator[max_class]}' with a probability of {round(max_prob * 100, 2)}%"
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else:
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result = f"The image is not recognized as a class within the range 281-285 ({max_class})"
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return jsonify({'result': result}), 200
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# Generate results
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for file in files:
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predictions = detect_cat(file, list_of_labels)
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if predictions is not None:
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predictions, error_messages = translate(predictions, lang)
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results['results'][file.filename] = {
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'isCat': False if not predictions else True,
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**({'predictions': predictions} if predictions is not None else {})
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}
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if error_messages is not None and predictions is None:
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results['errors'].append(error_messages)
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# Send response with 200 (Success)
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return Response(json.dumps(results), status=200, mimetype='application/json')
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if __name__ == '__main__':
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14
resources/en.properties
Normal file
14
resources/en.properties
Normal file
@ -0,0 +1,14 @@
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# EN
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lynx=lynx
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lion=lion
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tiger=tiger
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cheetah=cheetah
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leopard=leopard
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jaguar=jaguar
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tabby=tabby
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Egyptian_cat=Egyptian cat
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cougar=cougar
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Persian_cat=Persian cat
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Siamese_cat=Siamese cat
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snow_leopard=snow leopard
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tiger_cat=tiger cat
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14
resources/pl.properties
Normal file
14
resources/pl.properties
Normal file
@ -0,0 +1,14 @@
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# PL
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lynx=ryś
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lion=lew
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tiger=tygrys
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cheetah=gepard
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leopard=lampart
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jaguar=jaguar
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tabby=kot pręgowany
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Egyptian_cat=kot egipski
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cougar=puma
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Persian_cat=kot perski
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Siamese_cat=kot syjamski
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snow_leopard=lampart śnieżny
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tiger_cat=kot tygrysi
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33
validator.py
Normal file
33
validator.py
Normal file
@ -0,0 +1,33 @@
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import imghdr
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"""
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Validation method.
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If everything fine then returns empty list.
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Else returns list of error messages.
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"""
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# Allowed extensions
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allowed_extensions = {'jpg', 'jpeg', 'png'}
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def validate(request):
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errors = []
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try:
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images = request.files.getlist('image')
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# Case 1 - > request has no 'Image' Key in body
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if images is None:
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raise KeyError("'Image' key not found in request.")
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# Case 2 - > if some of the images has no filename
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if not images or all(img.filename == '' for img in images):
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raise ValueError("Value of 'Image' key is empty.")
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# Case 3 -> if some of the images has wrong extension
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for img in images:
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if imghdr.what(img) not in allowed_extensions:
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raise ValueError(f"Given file '{img.filename}' has no allowed extension. "
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f"Allowed extensions: {allowed_extensions}.")
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except Exception as e:
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errors.append(e.args[0])
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return errors
|
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Block a user