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- from torch import nn
- from ..common import Activation
- def make_divisible(v, divisor=8, min_value=None):
- if min_value is None:
- min_value = divisor
- new_v = max(min_value, int(v + divisor / 2) // divisor * divisor)
- if new_v < 0.9 * v:
- new_v += divisor
- return new_v
- class ConvBNLayer(nn.Module):
- def __init__(
- self,
- in_channels,
- out_channels,
- kernel_size,
- stride,
- padding,
- groups=1,
- if_act=True,
- act=None,
- name=None,
- ):
- super(ConvBNLayer, self).__init__()
- self.if_act = if_act
- self.conv = nn.Conv2d(
- in_channels=in_channels,
- out_channels=out_channels,
- kernel_size=kernel_size,
- stride=stride,
- padding=padding,
- groups=groups,
- bias=False,
- )
- self.bn = nn.BatchNorm2d(
- out_channels,
- )
- if self.if_act:
- self.act = Activation(act_type=act, inplace=True)
- def forward(self, x):
- x = self.conv(x)
- x = self.bn(x)
- if self.if_act:
- x = self.act(x)
- return x
- class SEModule(nn.Module):
- def __init__(self, in_channels, reduction=4, name=""):
- super(SEModule, self).__init__()
- self.avg_pool = nn.AdaptiveAvgPool2d(1)
- self.conv1 = nn.Conv2d(
- in_channels=in_channels,
- out_channels=in_channels // reduction,
- kernel_size=1,
- stride=1,
- padding=0,
- bias=True,
- )
- self.relu1 = Activation(act_type="relu", inplace=True)
- self.conv2 = nn.Conv2d(
- in_channels=in_channels // reduction,
- out_channels=in_channels,
- kernel_size=1,
- stride=1,
- padding=0,
- bias=True,
- )
- self.hard_sigmoid = Activation(act_type="hard_sigmoid", inplace=True)
- def forward(self, inputs):
- outputs = self.avg_pool(inputs)
- outputs = self.conv1(outputs)
- outputs = self.relu1(outputs)
- outputs = self.conv2(outputs)
- outputs = self.hard_sigmoid(outputs)
- outputs = inputs * outputs
- return outputs
- class ResidualUnit(nn.Module):
- def __init__(
- self,
- in_channels,
- mid_channels,
- out_channels,
- kernel_size,
- stride,
- use_se,
- act=None,
- name="",
- ):
- super(ResidualUnit, self).__init__()
- self.if_shortcut = stride == 1 and in_channels == out_channels
- self.if_se = use_se
- self.expand_conv = ConvBNLayer(
- in_channels=in_channels,
- out_channels=mid_channels,
- kernel_size=1,
- stride=1,
- padding=0,
- if_act=True,
- act=act,
- name=name + "_expand",
- )
- self.bottleneck_conv = ConvBNLayer(
- in_channels=mid_channels,
- out_channels=mid_channels,
- kernel_size=kernel_size,
- stride=stride,
- padding=int((kernel_size - 1) // 2),
- groups=mid_channels,
- if_act=True,
- act=act,
- name=name + "_depthwise",
- )
- if self.if_se:
- self.mid_se = SEModule(mid_channels, name=name + "_se")
- self.linear_conv = ConvBNLayer(
- in_channels=mid_channels,
- out_channels=out_channels,
- kernel_size=1,
- stride=1,
- padding=0,
- if_act=False,
- act=None,
- name=name + "_linear",
- )
- def forward(self, inputs):
- x = self.expand_conv(inputs)
- x = self.bottleneck_conv(x)
- if self.if_se:
- x = self.mid_se(x)
- x = self.linear_conv(x)
- if self.if_shortcut:
- x = inputs + x
- return x
- class MobileNetV3(nn.Module):
- def __init__(
- self, in_channels=3, model_name="large", scale=0.5, disable_se=False, **kwargs
- ):
- """
- the MobilenetV3 backbone network for detection module.
- Args:
- params(dict): the super parameters for build network
- """
- super(MobileNetV3, self).__init__()
- self.disable_se = disable_se
- if model_name == "large":
- cfg = [
- # k, exp, c, se, nl, s,
- [3, 16, 16, False, "relu", 1],
- [3, 64, 24, False, "relu", 2],
- [3, 72, 24, False, "relu", 1],
- [5, 72, 40, True, "relu", 2],
- [5, 120, 40, True, "relu", 1],
- [5, 120, 40, True, "relu", 1],
- [3, 240, 80, False, "hard_swish", 2],
- [3, 200, 80, False, "hard_swish", 1],
- [3, 184, 80, False, "hard_swish", 1],
- [3, 184, 80, False, "hard_swish", 1],
- [3, 480, 112, True, "hard_swish", 1],
- [3, 672, 112, True, "hard_swish", 1],
- [5, 672, 160, True, "hard_swish", 2],
- [5, 960, 160, True, "hard_swish", 1],
- [5, 960, 160, True, "hard_swish", 1],
- ]
- cls_ch_squeeze = 960
- elif model_name == "small":
- cfg = [
- # k, exp, c, se, nl, s,
- [3, 16, 16, True, "relu", 2],
- [3, 72, 24, False, "relu", 2],
- [3, 88, 24, False, "relu", 1],
- [5, 96, 40, True, "hard_swish", 2],
- [5, 240, 40, True, "hard_swish", 1],
- [5, 240, 40, True, "hard_swish", 1],
- [5, 120, 48, True, "hard_swish", 1],
- [5, 144, 48, True, "hard_swish", 1],
- [5, 288, 96, True, "hard_swish", 2],
- [5, 576, 96, True, "hard_swish", 1],
- [5, 576, 96, True, "hard_swish", 1],
- ]
- cls_ch_squeeze = 576
- else:
- raise NotImplementedError(
- "mode[" + model_name + "_model] is not implemented!"
- )
- supported_scale = [0.35, 0.5, 0.75, 1.0, 1.25]
- assert (
- scale in supported_scale
- ), "supported scale are {} but input scale is {}".format(supported_scale, scale)
- inplanes = 16
- # conv1
- self.conv = ConvBNLayer(
- in_channels=in_channels,
- out_channels=make_divisible(inplanes * scale),
- kernel_size=3,
- stride=2,
- padding=1,
- groups=1,
- if_act=True,
- act="hard_swish",
- name="conv1",
- )
- self.stages = nn.ModuleList()
- self.out_channels = []
- block_list = []
- i = 0
- inplanes = make_divisible(inplanes * scale)
- for k, exp, c, se, nl, s in cfg:
- se = se and not self.disable_se
- if s == 2 and i > 2:
- self.out_channels.append(inplanes)
- self.stages.append(nn.Sequential(*block_list))
- block_list = []
- block_list.append(
- ResidualUnit(
- in_channels=inplanes,
- mid_channels=make_divisible(scale * exp),
- out_channels=make_divisible(scale * c),
- kernel_size=k,
- stride=s,
- use_se=se,
- act=nl,
- name="conv" + str(i + 2),
- )
- )
- inplanes = make_divisible(scale * c)
- i += 1
- block_list.append(
- ConvBNLayer(
- in_channels=inplanes,
- out_channels=make_divisible(scale * cls_ch_squeeze),
- kernel_size=1,
- stride=1,
- padding=0,
- groups=1,
- if_act=True,
- act="hard_swish",
- name="conv_last",
- )
- )
- self.stages.append(nn.Sequential(*block_list))
- self.out_channels.append(make_divisible(scale * cls_ch_squeeze))
- # for i, stage in enumerate(self.stages):
- # self.add_sublayer(sublayer=stage, name="stage{}".format(i))
- def forward(self, x):
- x = self.conv(x)
- out_list = []
- for stage in self.stages:
- x = stage(x)
- out_list.append(x)
- return out_list
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