in darknet.py [0:0]
def create_network(self, blocks):
models = nn.ModuleList()
prev_filters = 3
out_filters =[]
conv_id = 0
for block in blocks:
if block['type'] == 'net':
prev_filters = int(block['channels'])
continue
elif block['type'] == 'convolutional':
conv_id = conv_id + 1
batch_normalize = int(block['batch_normalize'])
filters = int(block['filters'])
kernel_size = int(block['size'])
stride = int(block['stride'])
is_pad = int(block['pad'])
pad = (kernel_size-1)//2 if is_pad else 0
activation = block['activation']
model = nn.Sequential()
if batch_normalize:
model.add_module('conv{0}'.format(conv_id), nn.Conv2d(prev_filters, filters, kernel_size, stride, pad, bias=False))
model.add_module('bn{0}'.format(conv_id), nn.BatchNorm2d(filters, eps=1e-4))
#model.add_module('bn{0}'.format(conv_id), BN2d(filters))
else:
model.add_module('conv{0}'.format(conv_id), nn.Conv2d(prev_filters, filters, kernel_size, stride, pad))
if activation == 'leaky':
model.add_module('leaky{0}'.format(conv_id), nn.LeakyReLU(0.1, inplace=True))
elif activation == 'relu':
model.add_module('relu{0}'.format(conv_id), nn.ReLU(inplace=True))
prev_filters = filters
out_filters.append(prev_filters)
models.append(model)
elif block['type'] == 'maxpool':
pool_size = int(block['size'])
stride = int(block['stride'])
if stride > 1:
model = nn.MaxPool2d(pool_size, stride)
else:
model = MaxPoolStride1()
out_filters.append(prev_filters)
models.append(model)
elif block['type'] == 'avgpool':
model = GlobalAvgPool2d()
out_filters.append(prev_filters)
models.append(model)
elif block['type'] == 'softmax':
model = nn.Softmax()
out_filters.append(prev_filters)
models.append(model)
elif block['type'] == 'cost':
if block['_type'] == 'sse':
model = nn.MSELoss(size_average=True)
elif block['_type'] == 'L1':
model = nn.L1Loss(size_average=True)
elif block['_type'] == 'smooth':
model = nn.SmoothL1Loss(size_average=True)
out_filters.append(1)
models.append(model)
elif block['type'] == 'reorg':
stride = int(block['stride'])
prev_filters = stride * stride * prev_filters
out_filters.append(prev_filters)
models.append(Reorg(stride))
elif block['type'] == 'route':
layers = block['layers'].split(',')
ind = len(models)
layers = [int(i) if int(i) > 0 else int(i)+ind for i in layers]
if len(layers) == 1:
prev_filters = out_filters[layers[0]]
elif len(layers) == 2:
assert(layers[0] == ind - 1)
prev_filters = out_filters[layers[0]] + out_filters[layers[1]]
out_filters.append(prev_filters)
models.append(EmptyModule())
elif block['type'] == 'shortcut':
ind = len(models)
prev_filters = out_filters[ind-1]
out_filters.append(prev_filters)
models.append(EmptyModule())
elif block['type'] == 'connected':
filters = int(block['output'])
if block['activation'] == 'linear':
model = nn.Linear(prev_filters, filters)
elif block['activation'] == 'leaky':
model = nn.Sequential(
nn.Linear(prev_filters, filters),
nn.LeakyReLU(0.1, inplace=True))
elif block['activation'] == 'relu':
model = nn.Sequential(
nn.Linear(prev_filters, filters),
nn.ReLU(inplace=True))
prev_filters = filters
out_filters.append(prev_filters)
models.append(model)
elif block['type'] == 'region':
loss = RegionLoss()
anchors = block['anchors'].split(',')
if anchors == ['']:
loss.anchors = []
else:
loss.anchors = [float(i) for i in anchors]
loss.num_classes = int(block['classes'])
loss.num_anchors = int(block['num'])
loss.anchor_step = len(loss.anchors)//loss.num_anchors
loss.object_scale = float(block['object_scale'])
loss.noobject_scale = float(block['noobject_scale'])
loss.class_scale = float(block['class_scale'])
loss.coord_scale = float(block['coord_scale'])
out_filters.append(prev_filters)
models.append(loss)
else:
print('unknown type %s' % (block['type']))
return models