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36 changes: 23 additions & 13 deletions python/caffe/net_spec.py
Original file line number Diff line number Diff line change
Expand Up @@ -18,7 +18,7 @@ class -- assign to its attributes directly to name layers, and call
are not guaranteed to be forward-compatible.
"""

from collections import OrderedDict
from collections import OrderedDict, Counter

from .proto import caffe_pb2
from google import protobuf
Expand All @@ -44,10 +44,8 @@ def to_proto(*tops):
"""Generate a NetParameter that contains all layers needed to compute
all arguments."""

if not isinstance(tops, tuple):
tops = (tops,)
layers = OrderedDict()
autonames = {}
autonames = Counter()
for top in tops:
top.fn._to_proto(layers, {}, autonames)
net = caffe_pb2.NetParameter()
Expand Down Expand Up @@ -89,6 +87,9 @@ def to_proto(self):

return to_proto(self)

def _to_proto(self, layers, names, autonames):
return self.fn._to_proto(layers, names, autonames)


class Function(object):
"""A Function specifies a layer, its parameters, and its inputs (which
Expand All @@ -107,19 +108,26 @@ def __init__(self, type_name, inputs, params):
del self.params['in_place']
self.tops = tuple(Top(self, n) for n in range(self.ntop))

def _get_name(self, top, names, autonames):
def _get_name(self, names, autonames):
if self not in names and self.ntop > 0:
names[self] = self._get_top_name(self.tops[0], names, autonames)
elif self not in names:
autonames[self.type_name] += 1
names[self] = self.type_name + str(autonames[self.type_name])
return names[self]

def _get_top_name(self, top, names, autonames):
if top not in names:
n = autonames.setdefault(top.fn.type_name, 1)
autonames[top.fn.type_name] += 1
names[top] = top.fn.type_name + str(n)
names[top] = top.fn.type_name + str(autonames[top.fn.type_name])
return names[top]

def _to_proto(self, layers, names, autonames):
if self in layers:
return
bottom_names = []
for inp in self.inputs:
inp.fn._to_proto(layers, names, autonames)
inp._to_proto(layers, names, autonames)
bottom_names.append(layers[inp.fn].top[inp.n])
layer = caffe_pb2.LayerParameter()
layer.type = self.type_name
Expand All @@ -129,8 +137,8 @@ def _to_proto(self, layers, names, autonames):
layer.top.extend(layer.bottom)
else:
for top in self.tops:
layer.top.append(self._get_name(top, names, autonames))
layer.name = self._get_name(self.tops[0], names, autonames)
layer.top.append(self._get_top_name(top, names, autonames))
layer.name = self._get_name(names, autonames)

for k, v in six.iteritems(self.params):
# special case to handle generic *params
Expand Down Expand Up @@ -163,10 +171,10 @@ def __getattr__(self, name):

def to_proto(self):
names = {v: k for k, v in six.iteritems(self.tops)}
autonames = {}
autonames = Counter()
layers = OrderedDict()
for name, top in six.iteritems(self.tops):
top.fn._to_proto(layers, names, autonames)
top._to_proto(layers, names, autonames)
net = caffe_pb2.NetParameter()
net.layer.extend(layers.values())
return net
Expand All @@ -180,7 +188,9 @@ class Layers(object):
def __getattr__(self, name):
def layer_fn(*args, **kwargs):
fn = Function(name, args, kwargs)
if fn.ntop == 1:
if fn.ntop == 0:
return fn
elif fn.ntop == 1:
return fn.tops[0]
else:
return fn.tops
Expand Down
15 changes: 15 additions & 0 deletions python/caffe/test/test_net_spec.py
Original file line number Diff line number Diff line change
Expand Up @@ -41,6 +41,14 @@ def anon_lenet(batch_size):
loss = L.SoftmaxWithLoss(ip2, label)
return loss.to_proto()

def silent_net():
n = caffe.NetSpec()
n.data, n.data2 = L.DummyData(shape=[dict(dim=[3]), dict(dim=[4, 2])],
ntop=2)
n.silence_data = L.Silence(n.data, ntop=0)
n.silence_data2 = L.Silence(n.data2, ntop=0)
return n.to_proto()

class TestNetSpec(unittest.TestCase):
def load_net(self, net_proto):
f = tempfile.NamedTemporaryFile(delete=False)
Expand All @@ -65,3 +73,10 @@ def test_lenet(self):
net_proto.layer[6].top)
net = self.load_net(net_proto)
self.assertEqual(len(net.layers), 9)

def test_zero_tops(self):
"""Test net construction for top-less layers."""

net_proto = silent_net()
net = self.load_net(net_proto)
self.assertEqual(len(net.forward()), 0)