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training.models: simplify CTC loss layer
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1 changed files with 3 additions and 6 deletions
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@ -29,6 +29,7 @@ from tensorflow.keras.layers import (
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)
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from tensorflow.keras.models import Model
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from tensorflow.keras.regularizers import l2
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from tensorflow.keras.backend import ctc_batch_cost
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from ..patch_encoder import Patches, PatchEncoder
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@ -45,10 +46,6 @@ MERGE_AXIS = -1
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class CTCLayer(Layer):
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def __init__(self, name=None):
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super().__init__(name=name)
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self.loss_fn = tf.keras.backend.ctc_batch_cost
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def call(self, y_true, y_pred):
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batch_len = tf.cast(tf.shape(y_true)[0], dtype="int64")
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input_length = tf.cast(tf.shape(y_pred)[1], dtype="int64")
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@ -56,7 +53,7 @@ class CTCLayer(Layer):
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input_length = input_length * tf.ones(shape=(batch_len, 1), dtype="int64")
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label_length = label_length * tf.ones(shape=(batch_len, 1), dtype="int64")
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loss = self.loss_fn(y_true, y_pred, input_length, label_length)
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loss = ctc_batch_cost(y_true, y_pred, input_length, label_length)
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self.add_loss(loss)
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# At test time, just return the computed predictions.
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@ -505,6 +502,6 @@ def cnn_rnn_ocr_model(image_height=None, image_width=None, n_classes=None, max_s
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# Add CTC layer for calculating CTC loss at each step.
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output = CTCLayer(name="ctc_loss")(labels, out)
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model = Model(inputs=[input_img, labels], outputs=output, name="handwriting_recognizer")
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model = Model(inputs=(input_img, labels), outputs=output, name="handwriting_recognizer")
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return model
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