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我想在 Tensorflow 中实现一个具有预训练权重的 LSTM 模型。这些权重可能来自 Caffee 或 Torch。
我发现文件中有 LSTM 单元格rnn_cell.py,例如rnn_cell.BasicLSTMCellrnn_cell.MultiRNNCell。但是我怎样才能为这些 LSTM 单元加载预训练的权重。

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1 回答 1

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这是加载预训练 Caffe 模型的解决方案。请参阅此处的完整代码,在此线程的讨论中引用了该代码。

net_caffe = caffe.Net(prototxt, caffemodel, caffe.TEST)
caffe_layers = {}

for i, layer in enumerate(net_caffe.layers):
    layer_name = net_caffe._layer_names[i]
    caffe_layers[layer_name] = layer

def caffe_weights(layer_name):
    layer = caffe_layers[layer_name]
    return layer.blobs[0].data

def caffe_bias(layer_name):
    layer = caffe_layers[layer_name]
    return layer.blobs[1].data

#tensorflow uses [filter_height, filter_width, in_channels, out_channels] 2-3-1-0 
#caffe uses [out_channels, in_channels, filter_height, filter_width] 0-1-2-3
def caffe2tf_filter(name):
    f = caffe_weights(name)
    return f.transpose((2, 3, 1, 0))

class ModelFromCaffe():
    def get_conv_filter(self, name):
        w = caffe2tf_filter(name)
        return tf.constant(w, dtype=tf.float32, name="filter")

    def get_bias(self, name):
        b = caffe_bias(name)
        return tf.constant(b, dtype=tf.float32, name="bias")

    def get_fc_weight(self, name):
        cw = caffe_weights(name)
        if name == "fc6":
            assert cw.shape == (4096, 25088)
            cw = cw.reshape((4096, 512, 7, 7)) 
            cw = cw.transpose((2, 3, 1, 0))
            cw = cw.reshape(25088, 4096)
        else:
            cw = cw.transpose((1, 0))

        return tf.constant(cw, dtype=tf.float32, name="weight")

images = tf.placeholder("float", [None, 224, 224, 3], name="images")
m = ModelFromCaffe()

with tf.Session() as sess:
  sess.run(tf.initialize_all_variables())
  batch = cat.reshape((1, 224, 224, 3))
  out = sess.run([m.prob, m.relu1_1, m.pool5, m.fc6], feed_dict={ images: batch })
...
于 2016-06-27T19:47:21.627 回答