예제 #1
0
  def __init__(self,
               inc,
               outc,
               inner_inc,
               inner_outc,
               inner_module=None,
               depth=1,
               bn_momentum=0.05,
               dimension=-1):
    ME.MinkowskiNetwork.__init__(self, dimension)
    self.depth = depth

    self.conv = nn.Sequential(
        conv_norm_non(
            inc,
            inner_inc,
            3,
            2,
            dimension,
            region_type=self.REGION_TYPE,
            norm_type=self.NORM_TYPE,
            nonlinearity=self.NONLINEARITY), *[
                get_block(
                    self.NORM_TYPE,
                    inner_inc,
                    inner_inc,
                    bn_momentum=bn_momentum,
                    region_type=self.REGION_TYPE,
                    dimension=dimension) for d in range(depth)
            ])
    self.inner_module = inner_module
    self.convtr = nn.Sequential(
        conv_tr(
            in_channels=inner_outc,
            out_channels=inner_outc,
            kernel_size=3,
            stride=2,
            dilation=1,
            has_bias=False,
            region_type=self.REGION_TYPE,
            dimension=dimension),
        get_norm(
            self.NORM_TYPE, inner_outc, bn_momentum=bn_momentum, dimension=dimension),
        get_nonlinearity(self.NONLINEARITY))

    self.cat_conv = conv_norm_non(
        inner_outc + inc,
        outc,
        1,
        1,
        dimension,
        norm_type=self.NORM_TYPE,
        nonlinearity=self.NONLINEARITY)
  def __init__(self,
               in_channels=3,
               out_channels=32,
               bn_momentum=0.1,
               normalize_feature=None,
               conv1_kernel_size=None,
               D=3):
    ME.MinkowskiNetwork.__init__(self, D)
    NORM_TYPE = self.NORM_TYPE
    BLOCK_NORM_TYPE = self.BLOCK_NORM_TYPE
    CHANNELS = self.CHANNELS
    TR_CHANNELS = self.TR_CHANNELS
    self.normalize_feature = normalize_feature
    self.conv1 = ME.MinkowskiConvolution(
        in_channels=in_channels,
        out_channels=CHANNELS[1],
        kernel_size=conv1_kernel_size,
        stride=1,
        dilation=1,
        has_bias=False,
        dimension=D)
    self.norm1 = get_norm(NORM_TYPE, CHANNELS[1], bn_momentum=bn_momentum, D=D)

    self.block1 = get_block(
        BLOCK_NORM_TYPE, CHANNELS[1], CHANNELS[1], bn_momentum=bn_momentum, D=D)

    self.conv2 = ME.MinkowskiConvolution(
        in_channels=CHANNELS[1],
        out_channels=CHANNELS[2],
        kernel_size=3,
        stride=2,
        dilation=1,
        has_bias=False,
        dimension=D)
    self.norm2 = get_norm(NORM_TYPE, CHANNELS[2], bn_momentum=bn_momentum, D=D)

    self.block2 = get_block(
        BLOCK_NORM_TYPE, CHANNELS[2], CHANNELS[2], bn_momentum=bn_momentum, D=D)

    self.conv3 = ME.MinkowskiConvolution(
        in_channels=CHANNELS[2],
        out_channels=CHANNELS[3],
        kernel_size=3,
        stride=2,
        dilation=1,
        has_bias=False,
        dimension=D)
    self.norm3 = get_norm(NORM_TYPE, CHANNELS[3], bn_momentum=bn_momentum, D=D)

    self.block3 = get_block(
        BLOCK_NORM_TYPE, CHANNELS[3], CHANNELS[3], bn_momentum=bn_momentum, D=D)

    self.conv4 = ME.MinkowskiConvolution(
        in_channels=CHANNELS[3],
        out_channels=CHANNELS[4],
        kernel_size=3,
        stride=2,
        dilation=1,
        has_bias=False,
        dimension=D)
    self.norm4 = get_norm(NORM_TYPE, CHANNELS[4], bn_momentum=bn_momentum, D=D)

    self.block4 = get_block(
        BLOCK_NORM_TYPE, CHANNELS[4], CHANNELS[4], bn_momentum=bn_momentum, D=D)

    self.conv4_tr = ME.MinkowskiConvolutionTranspose(
        in_channels=CHANNELS[4],
        out_channels=TR_CHANNELS[4],
        kernel_size=3,
        stride=2,
        dilation=1,
        has_bias=False,
        dimension=D)
    self.norm4_tr = get_norm(NORM_TYPE, TR_CHANNELS[4], bn_momentum=bn_momentum, D=D)

    self.block4_tr = get_block(
        BLOCK_NORM_TYPE, TR_CHANNELS[4], TR_CHANNELS[4], bn_momentum=bn_momentum, D=D)

    self.conv3_tr = ME.MinkowskiConvolutionTranspose(
        in_channels=CHANNELS[3] + TR_CHANNELS[4],
        out_channels=TR_CHANNELS[3],
        kernel_size=3,
        stride=2,
        dilation=1,
        has_bias=False,
        dimension=D)
    self.norm3_tr = get_norm(NORM_TYPE, TR_CHANNELS[3], bn_momentum=bn_momentum, D=D)

    self.block3_tr = get_block(
        BLOCK_NORM_TYPE, TR_CHANNELS[3], TR_CHANNELS[3], bn_momentum=bn_momentum, D=D)

    self.conv2_tr = ME.MinkowskiConvolutionTranspose(
        in_channels=CHANNELS[2] + TR_CHANNELS[3],
        out_channels=TR_CHANNELS[2],
        kernel_size=3,
        stride=2,
        dilation=1,
        has_bias=False,
        dimension=D)
    self.norm2_tr = get_norm(NORM_TYPE, TR_CHANNELS[2], bn_momentum=bn_momentum, D=D)

    self.block2_tr = get_block(
        BLOCK_NORM_TYPE, TR_CHANNELS[2], TR_CHANNELS[2], bn_momentum=bn_momentum, D=D)

    self.conv1_tr = ME.MinkowskiConvolution(
        in_channels=CHANNELS[1] + TR_CHANNELS[2],
        out_channels=TR_CHANNELS[1],
        kernel_size=1,
        stride=1,
        dilation=1,
        has_bias=False,
        dimension=D)

    # self.block1_tr = BasicBlockBN(TR_CHANNELS[1], TR_CHANNELS[1], bn_momentum=bn_momentum, D=D)

    self.final = ME.MinkowskiConvolution(
        in_channels=TR_CHANNELS[1],
        out_channels=out_channels,
        kernel_size=1,
        stride=1,
        dilation=1,
        has_bias=True,
        dimension=D)
예제 #3
0
  def __init__(self,
               in_channels=3,
               out_channels=32,
               bn_momentum=0.1,
               conv1_kernel_size=3,
               normalize_feature=False,
               D=3):
    ME.MinkowskiNetwork.__init__(self, D)
    NORM_TYPE = self.NORM_TYPE
    BLOCK_NORM_TYPE = self.BLOCK_NORM_TYPE
    CHANNELS = self.CHANNELS
    TR_CHANNELS = self.TR_CHANNELS
    REGION_TYPE = self.REGION_TYPE
    self.normalize_feature = normalize_feature
    self.conv1 = conv(
        in_channels=in_channels,
        out_channels=CHANNELS[1],
        kernel_size=conv1_kernel_size,
        stride=1,
        dilation=1,
        has_bias=False,
        region_type=ME.RegionType.HYPERCUBE,
        dimension=D)
    self.norm1 = get_norm(NORM_TYPE, CHANNELS[1], bn_momentum=bn_momentum, dimension=D)

    self.block1 = get_block(
        BLOCK_NORM_TYPE,
        CHANNELS[1],
        CHANNELS[1],
        bn_momentum=bn_momentum,
        region_type=REGION_TYPE,
        dimension=D)

    self.pool2 = ME.MinkowskiSumPooling(kernel_size=2, stride=2, dimension=D)
    self.conv2 = conv(
        in_channels=CHANNELS[1],
        out_channels=CHANNELS[2],
        kernel_size=3,
        stride=1,
        dilation=1,
        has_bias=False,
        region_type=REGION_TYPE,
        dimension=D)
    self.norm2 = get_norm(NORM_TYPE, CHANNELS[2], bn_momentum=bn_momentum, dimension=D)

    self.block2 = get_block(
        BLOCK_NORM_TYPE,
        CHANNELS[2],
        CHANNELS[2],
        bn_momentum=bn_momentum,
        region_type=REGION_TYPE,
        dimension=D)

    self.pool3 = ME.MinkowskiSumPooling(kernel_size=2, stride=2, dimension=D)
    self.conv3 = conv(
        in_channels=CHANNELS[2],
        out_channels=CHANNELS[3],
        kernel_size=3,
        stride=1,
        dilation=1,
        has_bias=False,
        region_type=REGION_TYPE,
        dimension=D)
    self.norm3 = get_norm(NORM_TYPE, CHANNELS[3], bn_momentum=bn_momentum, dimension=D)

    self.block3 = get_block(
        BLOCK_NORM_TYPE,
        CHANNELS[3],
        CHANNELS[3],
        bn_momentum=bn_momentum,
        region_type=REGION_TYPE,
        dimension=D)

    self.pool4 = ME.MinkowskiSumPooling(kernel_size=2, stride=2, dimension=D)
    self.conv4 = conv(
        in_channels=CHANNELS[3],
        out_channels=CHANNELS[4],
        kernel_size=3,
        stride=1,
        dilation=1,
        has_bias=False,
        region_type=ME.RegionType.HYPERCUBE,
        dimension=D)
    self.norm4 = get_norm(NORM_TYPE, CHANNELS[4], bn_momentum=bn_momentum, dimension=D)

    self.block4 = get_block(
        BLOCK_NORM_TYPE,
        CHANNELS[4],
        CHANNELS[4],
        bn_momentum=bn_momentum,
        region_type=ME.RegionType.HYPERCUBE,
        dimension=D)

    self.conv4_tr = conv_tr(
        in_channels=CHANNELS[4],
        out_channels=TR_CHANNELS[4],
        kernel_size=3,
        stride=2,
        dilation=1,
        has_bias=False,
        region_type=ME.RegionType.HYPERCUBE,
        dimension=D)
    self.norm4_tr = get_norm(
        NORM_TYPE, TR_CHANNELS[4], bn_momentum=bn_momentum, dimension=D)

    self.block4_tr = get_block(
        BLOCK_NORM_TYPE,
        TR_CHANNELS[4],
        TR_CHANNELS[4],
        bn_momentum=bn_momentum,
        region_type=REGION_TYPE,
        dimension=D)

    self.conv3_tr = conv_tr(
        in_channels=CHANNELS[3] + TR_CHANNELS[4],
        out_channels=TR_CHANNELS[3],
        kernel_size=3,
        stride=2,
        dilation=1,
        has_bias=False,
        region_type=REGION_TYPE,
        dimension=D)
    self.norm3_tr = get_norm(
        NORM_TYPE, TR_CHANNELS[3], bn_momentum=bn_momentum, dimension=D)

    self.block3_tr = get_block(
        BLOCK_NORM_TYPE,
        TR_CHANNELS[3],
        TR_CHANNELS[3],
        bn_momentum=bn_momentum,
        region_type=REGION_TYPE,
        dimension=D)

    self.conv2_tr = conv_tr(
        in_channels=CHANNELS[2] + TR_CHANNELS[3],
        out_channels=TR_CHANNELS[2],
        kernel_size=3,
        stride=2,
        dilation=1,
        has_bias=False,
        region_type=REGION_TYPE,
        dimension=D)
    self.norm2_tr = get_norm(
        NORM_TYPE, TR_CHANNELS[2], bn_momentum=bn_momentum, dimension=D)

    self.block2_tr = get_block(
        BLOCK_NORM_TYPE,
        TR_CHANNELS[2],
        TR_CHANNELS[2],
        bn_momentum=bn_momentum,
        region_type=REGION_TYPE,
        dimension=D)

    self.conv1_tr = conv(
        in_channels=CHANNELS[1] + TR_CHANNELS[2],
        out_channels=TR_CHANNELS[1],
        kernel_size=1,
        stride=1,
        dilation=1,
        has_bias=False,
        dimension=D)

    # self.block1_tr = BasicBlockBN(TR_CHANNELS[1], TR_CHANNELS[1], bn_momentum=bn_momentum, D=D)

    self.final = ME.MinkowskiConvolution(
        in_channels=TR_CHANNELS[1],
        out_channels=out_channels,
        kernel_size=1,
        stride=1,
        dilation=1,
        has_bias=True,
        dimension=D)
예제 #4
0
  def __init__(self,
               in_channels=3,
               out_channels=32,
               bn_momentum=0.1,
               conv1_kernel_size=3,
               normalize_feature=False,
               D=3):
    ME.MinkowskiNetwork.__init__(self, D)
    NORM_TYPE = self.NORM_TYPE
    BLOCK_NORM_TYPE = self.BLOCK_NORM_TYPE
    CHANNELS = self.CHANNELS
    TR_CHANNELS = self.TR_CHANNELS
    DEPTHS = self.DEPTHS
    REGION_TYPE = self.REGION_TYPE
    self.normalize_feature = normalize_feature
    self.conv1 = conv(
        in_channels=in_channels,
        out_channels=CHANNELS[1],
        kernel_size=conv1_kernel_size,
        stride=1,
        dilation=1,
        has_bias=False,
        region_type=REGION_TYPE,
        dimension=D)
    self.norm1 = get_norm(NORM_TYPE, CHANNELS[1], bn_momentum=bn_momentum, dimension=D)

    self.block1 = nn.Sequential(*[
        get_block(
            BLOCK_NORM_TYPE,
            CHANNELS[1],
            CHANNELS[1],
            bn_momentum=bn_momentum,
            region_type=REGION_TYPE,
            dimension=D) for d in range(DEPTHS[1])
    ])

    self.pool2 = ME.MinkowskiSumPooling(kernel_size=2, stride=2, dimension=D)
    self.conv2 = conv(
        in_channels=CHANNELS[1],
        out_channels=CHANNELS[2],
        kernel_size=1,
        stride=1,
        dilation=1,
        has_bias=False,
        dimension=D)
    self.norm2 = get_norm(NORM_TYPE, CHANNELS[2], bn_momentum=bn_momentum, dimension=D)

    self.block2 = nn.Sequential(*[
        get_block(
            BLOCK_NORM_TYPE,
            CHANNELS[2],
            CHANNELS[2],
            bn_momentum=bn_momentum,
            region_type=REGION_TYPE,
            dimension=D) for d in range(DEPTHS[2])
    ])

    self.pool3 = ME.MinkowskiSumPooling(kernel_size=2, stride=2, dimension=D)
    self.conv3 = conv(
        in_channels=CHANNELS[2],
        out_channels=CHANNELS[3],
        kernel_size=1,
        stride=1,
        dilation=1,
        has_bias=False,
        dimension=D)
    self.norm3 = get_norm(NORM_TYPE, CHANNELS[3], bn_momentum=bn_momentum, dimension=D)

    self.block3 = nn.Sequential(*[
        get_block(
            BLOCK_NORM_TYPE,
            CHANNELS[3],
            CHANNELS[3],
            bn_momentum=bn_momentum,
            region_type=REGION_TYPE,
            dimension=D) for d in range(DEPTHS[3])
    ])

    self.pool3_tr = ME.MinkowskiPoolingTranspose(kernel_size=2, stride=2, dimension=D)
    self.conv3_tr = conv_tr(
        in_channels=CHANNELS[3],
        out_channels=TR_CHANNELS[3],
        kernel_size=1,
        stride=1,
        dilation=1,
        has_bias=False,
        dimension=D)
    self.norm3_tr = get_norm(
        NORM_TYPE, TR_CHANNELS[3], bn_momentum=bn_momentum, dimension=D)

    self.block3_tr = nn.Sequential(*[
        get_block(
            BLOCK_NORM_TYPE,
            TR_CHANNELS[3],
            TR_CHANNELS[3],
            bn_momentum=bn_momentum,
            region_type=REGION_TYPE,
            dimension=D) for d in range(DEPTHS[-3])
    ])

    self.pool2_tr = ME.MinkowskiPoolingTranspose(kernel_size=2, stride=2, dimension=D)
    self.conv2_tr = conv_tr(
        in_channels=CHANNELS[2] + TR_CHANNELS[3],
        out_channels=TR_CHANNELS[2],
        kernel_size=1,
        stride=1,
        dilation=1,
        has_bias=False,
        region_type=REGION_TYPE,
        dimension=D)
    self.norm2_tr = get_norm(
        NORM_TYPE, TR_CHANNELS[2], bn_momentum=bn_momentum, dimension=D)

    self.block2_tr = nn.Sequential(*[
        get_block(
            BLOCK_NORM_TYPE,
            TR_CHANNELS[2],
            TR_CHANNELS[2],
            bn_momentum=bn_momentum,
            region_type=REGION_TYPE,
            dimension=D) for d in range(DEPTHS[-2])
    ])

    self.conv1_tr = conv_tr(
        in_channels=CHANNELS[1] + TR_CHANNELS[2],
        out_channels=TR_CHANNELS[1],
        kernel_size=1,
        stride=1,
        dilation=1,
        has_bias=False,
        region_type=REGION_TYPE,
        dimension=D)

    # self.block1_tr = BasicBlockBN(TR_CHANNELS[1], TR_CHANNELS[1], bn_momentum=bn_momentum, dimension=D)

    self.final = conv(
        in_channels=TR_CHANNELS[1],
        out_channels=out_channels,
        kernel_size=1,
        stride=1,
        dilation=1,
        has_bias=True,
        dimension=D)