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https://github.com/sbrl/research-rainfallradar
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implement CBAM, but it's UNTESTED
Convolutional Block Attention Module.
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aimodel/src/lib/ai/components/cbam.py
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aimodel/src/lib/ai/components/cbam.py
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import tensorflow as tf
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class LayerCBAMAttentionSpatial(tf.keras.layers.Layer):
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def __init__(self, dim, **kwargs):
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super(LayerCBAMAttentionSpatial, self).__init__(**kwargs)
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self.param_dim = dim
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self.conv2d = tf.keras.layers.Conv2D(self.param_dim, kernel_size=7, padding="same", activation="sigmoid")
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def get_config(self):
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config = super(LayerCBAMAttentionSpatial, self).get_config()
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config.update({
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"dim": self.param_dim
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})
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return config
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def call(self, input_thing, training, **kwargs):
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pooled_max = tf.math.argmax(input_thing, axis=-1)
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pooled_avg = tf.math.reduce_mean(input_thing, axis=-1)
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result = tf.stack([pooled_max, pooled_avg])
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result = self.conv2d(result)
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return result
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class LayerCBAMAttentionChannel(tf.keras.layers.Layer):
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def __init__(self, dim, reduction_ratio=1, **kwargs):
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super(LayerCBAMAttentionSpatial, self).__init__(**kwargs)
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self.param_dim = dim
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self.mlp = tf.keras.Sequential([
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tf.keras.layers.Dense(self.param_dim)
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])
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def get_config(self):
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config = super(LayerCBAMAttentionSpatial, self).get_config()
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config.update({
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"dim": self.param_dim
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})
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return config
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def call(self, input_thing, training, **kwargs):
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pooled_max = tf.nn.max_pool2d(input_thing, ksize=input_thing.shape[1:3])
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pooled_avg = tf.nn.avg_pool2d(input_thing, ksize=input_thing.shape[1:3])
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pooled_max = self.mlp(pooled_max)
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pooled_avg = self.mlp(pooled_avg)
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result = tf.math.sigmoid(pooled_max + pooled_avg)
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return result
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def cbam_attention_spatial(input_thing, dim):
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pooled_max = tf.keras.layers.Lambda(lambda tensor: tf.math.argmax(tensor, axis=-1))(input_thing)
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pooled_avg = tf.keras.layers.Lambda(lambda tensor: tf.math.reduce_mean(tensor, axis=-1))
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pooled_max = tf.keras.layers.Dense(dim)(pooled_max)
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layer = tf.keras.layers.Concatenate()([pooled_max, pooled_avg])
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cbam_id_next = 0
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def cbam(input_thing, dim):
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"""Runs input_thing through CBAM.
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If you have a CNN-based model with skip connections, this layer would be placed at the end of a block directly BEFORE the skip connection rejoins.
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Args:
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input_thing (tf.Tensor): The input layer to operate on.
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dim (int): The size of the feature dimension.
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Returns:
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tf.Tensor: The input after being run through CBAM.
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"""
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id_this = cbam_id_next
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cbam_id_next += 1
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layer = input_thing
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attn_channel = LayerCBAMAttentionChannel(dim, name=f"cbam{id_this}.attn.channel")(input_thing)
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layer = tf.keras.layers.Multiply(name=f"cbam{id_this}.mult1")([layer, attn_channel])
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attn_spatial = LayerCBAMAttentionSpatial(dim, name=f"cbam{id_this}.attn.spatial")(input_thing)
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layer = tf.keras.layers.Multiply(name=f"cbam{id_this}.mult2")([layer, attn_spatial])
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return layer
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