I asked Francois Chollet about this (he doesn't have an SO account) and he kindly passed along this reply:

"th" format means that the convolutional kernels will have the shape (depth, input_depth, rows, cols)

"tf" format means that the convolutional kernels will have the shape (rows, cols, input_depth, depth)

Therefore you can convert from the former to the later via `np.transpose(x, (2, 3, 1, 0))`

where x is the value of the convolution kernel.

Here's some code to do the conversion:

```
from keras import backend as K
K.set_image_dim_ordering('th')
# build model in TH mode, as th_model
th_model = ...
# load weights that were saved in TH mode into th_model
th_model.load_weights(...)
K.set_image_dim_ordering('tf')
# build model in TF mode, as tf_model
tf_model = ...
# transfer weights from th_model to tf_model
for th_layer, tf_layer in zip(th_model.layers, tf_model.layers):
if th_layer.__class__.__name__ == 'Convolution2D':
kernel, bias = layer.get_weights()
kernel = np.transpose(kernel, (2, 3, 1, 0))
tf_layer.set_weights([kernel, bias])
else:
tf_layer.set_weights(tf_layer.get_weights())
```

In case the model contains Dense layers downstream of the Convolution2D layers, then the weight matrix of the first Dense layer would need to be shuffled as well.