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bai-2.1 (338787 parametre)

EEG üzerinden duygu sınıflandırması yapan "bai-2.1" modeli, bir önceki model olan "bai-2.0" modeline göre overfitting ihtimali azaltılmış ve optimize edilmiş versiyonudur. Tüm işlevleri aynıdır.

NOT: Gerçek zamanlı EEG veri takibi uygulamasına modeli entegre ederseniz, gerçek zamanlı olarak duygu tahmini yapabilmektedir. Uygulamaya erişebilmek için: https://github.com/neurazum/Realtime-EEG-Monitoring

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bai-2.1 (338787 parameters)

The "bai-2.1" model, which performs emotion classification over EEG, is an optimised version of the previous model "bai-2.0" with reduced overfitting probability. All functions are the same.

NOTE: If you integrate the model into a real-time EEG data tracking application, it can predict emotions in real time. To access the application: https://github.com/neurazum/Realtime-EEG-Monitoring

Doğruluk/Accuracy: %97.93621013133207

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Kullanım / Usage

import numpy as np
import pandas as pd
from sklearn.preprocessing import StandardScaler
from tensorflow.keras.models import load_model
import matplotlib.pyplot as plt

model_path = 'model-path'

model = load_model(model_path)

model_name = model_path.split('/')[-1].split('.')[0]

plt.figure(figsize=(10, 6))
plt.title(f'Duygu Tahmini ({model_name}.1)')
plt.xlabel('Zaman')
plt.ylabel('Sınıf')
plt.legend(loc='upper right')
plt.grid(True)
plt.show()
model.summary()

Tahmin / Prediction

import numpy as np
import pandas as pd
from sklearn.preprocessing import StandardScaler
from tensorflow.keras.models import load_model

model_path = 'model-path'

model = load_model(model_path)

scaler = StandardScaler()

predictions = model.predict(X_new_reshaped)
predicted_labels = np.argmax(predictions, axis=1)

label_mapping = {'NEGATIVE': 0, 'NEUTRAL': 1, 'POSITIVE': 2}
label_mapping_reverse = {v: k for k, v in label_mapping.items()}

#new_input = np.array([[23, 465, 12, 9653] * 637])
new_input = np.random.rand(1, 2548)  # 1 örnek ve 2548 özellik
new_input_scaled = scaler.fit_transform(new_input)
new_input_reshaped = new_input_scaled.reshape((new_input_scaled.shape[0], 1, new_input_scaled.shape[1]))

new_prediction = model.predict(new_input_reshaped)
predicted_label = np.argmax(new_prediction, axis=1)[0]
predicted_emotion = label_mapping_reverse[predicted_label]

if predicted_emotion == 'NEGATIVE':
    predicted_emotion = 'Negatif'
elif predicted_emotion == 'NEUTRAL':
    predicted_emotion = 'Nötr'
elif predicted_emotion == 'POSITIVE':
    predicted_emotion = 'Pozitif'

print(f'Giriş Verileri: {new_input}')
print(f'Tahmin Edilen Duygu: {predicted_emotion}')