[Bugfix][Keras] axis of softmax (#3834)
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Родитель
347e3d9d35
Коммит
07a83a669f
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@ -117,7 +117,16 @@ def _convert_advanced_activation(inexpr, keras_layer, etab):
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act_type = type(keras_layer).__name__
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if act_type == 'Softmax':
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return _op.nn.softmax(inexpr, axis=1)
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axis = keras_layer.axis
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dims = len(keras_layer.input_shape)
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if isinstance(axis, list):
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raise tvm.error.OpAttributeUnImplemented(
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'Softmax with axes {} is not supported.'.format(axis))
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if axis == -1:
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axis = 1
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else:
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axis = axis + 1 if axis < dims - 1 else 1
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return _op.nn.softmax(inexpr, axis=axis)
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if act_type == 'ReLU':
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if keras_layer.max_value:
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return _op.clip(inexpr, a_min=0., a_max=float(keras_layer.max_value))
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@ -344,7 +353,7 @@ def _convert_pooling(inexpr, keras_layer, etab):
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pad_l, pad_r = _get_pad_pair(in_w, pool_w, stride_w)
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params['padding'] = [pad_t, pad_l, pad_b, pad_r]
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else:
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raise tvm.error.OpAttributeUnimplemented(
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raise tvm.error.OpAttributeUnImplemented(
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'Padding with {} is not supported in operator Pooling.'.format(keras_layer.padding))
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if pool_type == 'MaxPooling2D':
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return _op.nn.max_pool2d(inexpr, **params)
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@ -95,6 +95,11 @@ def test_forward_merge():
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def test_forward_activations():
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data = keras.layers.Input(shape=(32, 32, 3))
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act_funcs = [keras.layers.Activation('softmax'),
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keras.layers.Softmax(),
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keras.layers.Softmax(axis=-1),
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keras.layers.Softmax(axis=1),
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keras.layers.Softmax(axis=2),
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keras.layers.Softmax(axis=3),
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keras.layers.Activation('softplus'),
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keras.layers.Activation('relu'),
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keras.layers.Activation('softsign'),
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@ -103,7 +108,6 @@ def test_forward_activations():
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keras.layers.Activation('tanh'),
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keras.layers.Activation('linear'),
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keras.layers.Activation('selu'),
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keras.layers.Softmax(),
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keras.layers.ReLU(),
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keras.layers.ReLU(max_value=6.),
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keras.layers.LeakyReLU(alpha=0.3),
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