13. (10 points) Keras shows multiple layers of feature extraction using Python code. How is it identifying features? ker
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13. (10 points) Keras shows multiple layers of feature extraction using Python code. How is it identifying features? ker
13. (10 points) Keras shows multiple layers of feature extraction using Python code. How is it identifying features? keras. Input (shape-(180, 180, 3)) x= data.augmentation (inputs) inputs x= layers. Rescaling (1-/255) (x) x = layers. Conv2D(filters-32, kernel.size-3, activation=" relu")(x) x = layers. MaxPooling2D(pool_size=2)(x) x = layers. Conv2D(filters-64, kernel-size-3, activation=" relu")(x) X= layers. MaxPooling2D(pool.size=2)(x) X = layers Conv2D(filters-128, kernel-size-3, activation=" relu")(x) x = layers. MaxPooling2D(pool_size=2)(x) x = layers. Conv2D( filters-256, kernel-size-3, activation-" relu" )(x) X= layers. MaxPooling2D(pool_size=2)(x) Xm layers. Conv2D( filters-256, kernel.size-3, activation="relu")(x) X = layers. Flatten ()(x)) x= layers. Dropout(0.5)(x) outputs layers. Dense (1, activation-"sigmoid")(x) model keras. Model (inputs-inputs, outputs-outputs) model compile(loss=" binary.crossentropy". optimizer="rmsprop", O shallow features, featuring engineering O local feature learning. global feature learning 3D tensors,
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