提交 b07912fc authored 作者: Razvan Pascanu's avatar Razvan Pascanu 提交者: Pascal Lamblin

tests for convolution R op

Conflicts: theano/tests/test_rop.py
上级 a1c0d613
...@@ -21,6 +21,8 @@ import numpy ...@@ -21,6 +21,8 @@ import numpy
from theano.gof import Op, Apply from theano.gof import Op, Apply
from theano.gradient import grad_undefined from theano.gradient import grad_undefined
from numpy.testing.noseclasses import KnownFailureTest from numpy.testing.noseclasses import KnownFailureTest
from theano.tensor.signal.downsample import DownsampleFactorMax
from theano.tensor.nnet import conv
''' '''
Special Op created to test what happens when you have one op that is not Special Op created to test what happens when you have one op that is not
...@@ -262,6 +264,54 @@ class test_RopLop(RopLop_checker): ...@@ -262,6 +264,54 @@ class test_RopLop(RopLop_checker):
self.x[:4].dimshuffle('x', 0), 0).sum(axis=1), self.x[:4].dimshuffle('x', 0), 0).sum(axis=1),
(1,)) (1,))
def test_conv(self):
for border_mode in ['valid', 'full']:
image_shape = (2, 2, 4, 5)
filter_shape = (2, 2, 2, 3)
image_dim = len(image_shape)
filter_dim = len(filter_shape)
input = tensor.TensorType('float64', [False] *
image_dim)(name='input')
filters = tensor.TensorType('float64', [False] *
filter_dim)(name='filter')
ev_input = tensor.TensorType('float64', [False] *
image_dim)(name='ev_input')
ev_filters = tensor.TensorType('float64', [False] *
filter_dim)(name='ev_filters')
bsize = image_shape[0]
if image_dim != 3:
bsize = 1
nkern = filter_shape[0]
if filter_dim != 3:
nkern = 1
def sym_conv2d(input, filters):
return conv.conv2d(input, filters, border_mode=border_mode)
output = sym_conv2d(input, filters).flatten()
yv = tensor.Rop(output, [input, filters], [ev_input, ev_filters])
rop_f = function([input, filters, ev_input, ev_filters],
yv, on_unused_input='ignore')
sy, _ = theano.scan(
lambda i, y, x1, x2, v1, v2:
(tensor.grad(y[i], x1) * v1).sum() + \
(tensor.grad(y[i], x2) * v2).sum(),
sequences = tensor.arange(output.shape[0]),
non_sequences=[output, input, filters,
ev_input, ev_filters])
scan_f = function([input, filters, ev_input, ev_filters], sy,
on_unused_input='ignore')
image_data = numpy.random.random(image_shape)
filter_data = numpy.random.random(filter_shape)
ev_image_data = numpy.random.random(image_shape)
ev_filter_data = numpy.random.random(filter_shape)
v1 = rop_f(image_data, filter_data, ev_image_data,
ev_filter_data)
v2 = scan_f(image_data, filter_data, ev_image_data,
ev_filter_data)
assert numpy.allclose(v1, v2), ("Rop mismatch: %s %s" %
(v1,v2))
def test_join(self): def test_join(self):
tv = numpy.asarray(self.rng.uniform(size=(10,)), tv = numpy.asarray(self.rng.uniform(size=(10,)),
theano.config.floatX) theano.config.floatX)
......
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