45 lines
1.1 KiB
Python
45 lines
1.1 KiB
Python
import numpy as np
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import tensorflow as tf
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from tensorflow import keras
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from tensorflow.keras import backend as K
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from disttf import GaussianRealisation,BiasedRealisation,BoxRealisation
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from disttf import MixtureLayer, MotioLayer, ScaleLayer, SplitLayer
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from disttf import NonLinearityLayer, SeperateLayer, RecombineLayer
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def gen_model(inputs, splits=10, realisation="gauss", mixture=0, nonlin=False):
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i=keras.layers.Input(shape=(inputs,))
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q=i
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v=tf.constant(1.0,dtype=tf.float32)
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#if splits>1:
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q,v=SplitLayer(splits)([q,v])
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q,v=MotioLayer()([q,v])
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q,v=ScaleLayer()([q,v])
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for j in range(mixture):
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q=MixtureLayer()(q)
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if nonlin:
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q=NonLinearityLayer()(q)
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if realisation=="gauss":
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q=GaussianRealisation()([q,v])
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elif realisation=="biased":
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q=BiasedRealisation()([q,v])
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elif realisation=="box":
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q=BoxRealisation()([q,v])
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else:
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raise ValueError("Unknown realisation type: "+realisation)
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model=keras.Model(inputs=i,outputs=q)
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loss=K.log(K.abs(q)+1e-6)
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loss=-K.mean(loss)
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model.add_loss(loss)
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return model
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