Upload 201 files
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layer { |
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name: "data" |
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type: "Input" |
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top: "data" |
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input_param { |
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shape { |
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dim: 1 |
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dim: 3 |
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dim: 500 |
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dim: 500 |
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} |
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} |
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} |
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layer { |
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name: "conv1_1" |
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type: "Convolution" |
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bottom: "data" |
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top: "conv1_1" |
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param { |
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lr_mult: 1 |
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decay_mult: 1 |
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} |
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param { |
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lr_mult: 2 |
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decay_mult: 0 |
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} |
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convolution_param { |
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num_output: 64 |
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pad: 100 |
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kernel_size: 3 |
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stride: 1 |
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weight_filler { |
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type: "gaussian" |
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std: 0.01 |
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} |
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bias_filler { |
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type: "constant" |
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value: 0 |
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} |
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} |
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} |
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layer { |
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name: "relu1_1" |
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type: "ReLU" |
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bottom: "conv1_1" |
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top: "conv1_1" |
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} |
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layer { |
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name: "conv1_2" |
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type: "Convolution" |
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bottom: "conv1_1" |
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top: "conv1_2" |
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param { |
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lr_mult: 1 |
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decay_mult: 1 |
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} |
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param { |
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lr_mult: 2 |
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decay_mult: 0 |
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} |
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convolution_param { |
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num_output: 64 |
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pad: 1 |
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kernel_size: 3 |
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stride: 1 |
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weight_filler { |
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type: "gaussian" |
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std: 0.01 |
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} |
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bias_filler { |
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type: "constant" |
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value: 0 |
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} |
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} |
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} |
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layer { |
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name: "relu1_2" |
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type: "ReLU" |
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bottom: "conv1_2" |
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top: "conv1_2" |
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} |
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layer { |
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name: "pool1" |
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type: "Pooling" |
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bottom: "conv1_2" |
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top: "pool1" |
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pooling_param { |
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pool: MAX |
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kernel_size: 2 |
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stride: 2 |
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} |
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} |
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layer { |
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name: "conv2_1" |
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type: "Convolution" |
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bottom: "pool1" |
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top: "conv2_1" |
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param { |
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lr_mult: 1 |
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decay_mult: 1 |
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} |
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param { |
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lr_mult: 2 |
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decay_mult: 0 |
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} |
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convolution_param { |
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num_output: 128 |
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pad: 1 |
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kernel_size: 3 |
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stride: 1 |
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weight_filler { |
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type: "gaussian" |
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std: 0.01 |
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} |
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bias_filler { |
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type: "constant" |
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value: 0 |
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} |
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} |
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} |
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layer { |
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name: "relu2_1" |
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type: "ReLU" |
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bottom: "conv2_1" |
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top: "conv2_1" |
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} |
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layer { |
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name: "conv2_2" |
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type: "Convolution" |
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bottom: "conv2_1" |
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top: "conv2_2" |
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param { |
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lr_mult: 1 |
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decay_mult: 1 |
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} |
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param { |
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lr_mult: 2 |
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decay_mult: 0 |
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} |
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convolution_param { |
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num_output: 128 |
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pad: 1 |
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kernel_size: 3 |
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stride: 1 |
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weight_filler { |
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type: "gaussian" |
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std: 0.01 |
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} |
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bias_filler { |
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type: "constant" |
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value: 0 |
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} |
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} |
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} |
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layer { |
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name: "relu2_2" |
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type: "ReLU" |
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bottom: "conv2_2" |
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top: "conv2_2" |
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} |
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layer { |
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name: "pool2" |
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type: "Pooling" |
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bottom: "conv2_2" |
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top: "pool2" |
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pooling_param { |
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pool: MAX |
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kernel_size: 2 |
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stride: 2 |
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} |
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} |
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layer { |
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name: "conv3_1" |
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type: "Convolution" |
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bottom: "pool2" |
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top: "conv3_1" |
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param { |
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lr_mult: 1 |
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decay_mult: 1 |
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} |
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param { |
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lr_mult: 2 |
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decay_mult: 0 |
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} |
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convolution_param { |
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num_output: 256 |
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pad: 1 |
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kernel_size: 3 |
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stride: 1 |
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weight_filler { |
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type: "gaussian" |
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std: 0.01 |
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} |
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bias_filler { |
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type: "constant" |
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value: 0 |
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} |
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} |
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} |
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layer { |
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name: "relu3_1" |
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type: "ReLU" |
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bottom: "conv3_1" |
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top: "conv3_1" |
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} |
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layer { |
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name: "conv3_2" |
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type: "Convolution" |
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bottom: "conv3_1" |
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top: "conv3_2" |
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param { |
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lr_mult: 1 |
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decay_mult: 1 |
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} |
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param { |
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lr_mult: 2 |
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decay_mult: 0 |
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} |
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convolution_param { |
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num_output: 256 |
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pad: 1 |
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kernel_size: 3 |
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stride: 1 |
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weight_filler { |
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type: "gaussian" |
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std: 0.01 |
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} |
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bias_filler { |
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type: "constant" |
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value: 0 |
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} |
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} |
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} |
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layer { |
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name: "relu3_2" |
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type: "ReLU" |
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bottom: "conv3_2" |
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top: "conv3_2" |
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} |
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layer { |
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name: "conv3_3" |
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type: "Convolution" |
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bottom: "conv3_2" |
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top: "conv3_3" |
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param { |
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lr_mult: 1 |
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decay_mult: 1 |
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} |
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param { |
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lr_mult: 2 |
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decay_mult: 0 |
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} |
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convolution_param { |
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num_output: 256 |
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pad: 1 |
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kernel_size: 3 |
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stride: 1 |
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weight_filler { |
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type: "gaussian" |
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std: 0.01 |
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} |
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bias_filler { |
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type: "constant" |
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value: 0 |
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} |
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} |
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} |
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layer { |
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name: "relu3_3" |
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type: "ReLU" |
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bottom: "conv3_3" |
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top: "conv3_3" |
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} |
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layer { |
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name: "pool3" |
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type: "Pooling" |
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bottom: "conv3_3" |
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top: "pool3" |
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pooling_param { |
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pool: MAX |
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kernel_size: 2 |
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stride: 2 |
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} |
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} |
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layer { |
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name: "conv4_1" |
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type: "Convolution" |
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bottom: "pool3" |
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top: "conv4_1" |
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param { |
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lr_mult: 1 |
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decay_mult: 1 |
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} |
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param { |
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lr_mult: 2 |
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decay_mult: 0 |
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} |
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convolution_param { |
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num_output: 512 |
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pad: 1 |
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kernel_size: 3 |
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stride: 1 |
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weight_filler { |
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type: "gaussian" |
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std: 0.01 |
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} |
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bias_filler { |
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type: "constant" |
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value: 0 |
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} |
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} |
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} |
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layer { |
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name: "relu4_1" |
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type: "ReLU" |
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bottom: "conv4_1" |
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top: "conv4_1" |
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} |
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layer { |
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name: "conv4_2" |
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type: "Convolution" |
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bottom: "conv4_1" |
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top: "conv4_2" |
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param { |
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lr_mult: 1 |
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decay_mult: 1 |
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} |
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param { |
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lr_mult: 2 |
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decay_mult: 0 |
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} |
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convolution_param { |
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num_output: 512 |
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pad: 1 |
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kernel_size: 3 |
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stride: 1 |
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weight_filler { |
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type: "gaussian" |
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std: 0.01 |
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} |
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bias_filler { |
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type: "constant" |
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value: 0 |
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} |
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} |
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} |
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layer { |
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name: "relu4_2" |
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type: "ReLU" |
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bottom: "conv4_2" |
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top: "conv4_2" |
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} |
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layer { |
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name: "conv4_3" |
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type: "Convolution" |
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bottom: "conv4_2" |
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top: "conv4_3" |
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param { |
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lr_mult: 1 |
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decay_mult: 1 |
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} |
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param { |
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lr_mult: 2 |
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decay_mult: 0 |
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} |
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convolution_param { |
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num_output: 512 |
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pad: 1 |
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kernel_size: 3 |
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stride: 1 |
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weight_filler { |
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|
type: "gaussian" |
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std: 0.01 |
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} |
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bias_filler { |
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|
type: "constant" |
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value: 0 |
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} |
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} |
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} |
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layer { |
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name: "relu4_3" |
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type: "ReLU" |
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bottom: "conv4_3" |
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top: "conv4_3" |
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} |
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layer { |
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name: "pool4" |
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type: "Pooling" |
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bottom: "conv4_3" |
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top: "pool4" |
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pooling_param { |
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pool: MAX |
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kernel_size: 2 |
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stride: 2 |
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} |
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} |
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layer { |
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name: "conv5_1" |
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type: "Convolution" |
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bottom: "pool4" |
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top: "conv5_1" |
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param { |
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lr_mult: 1 |
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decay_mult: 1 |
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} |
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param { |
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lr_mult: 2 |
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decay_mult: 0 |
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} |
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convolution_param { |
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num_output: 512 |
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pad: 1 |
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kernel_size: 3 |
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stride: 1 |
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weight_filler { |
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type: "gaussian" |
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std: 0.01 |
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} |
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bias_filler { |
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type: "constant" |
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value: 0 |
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} |
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} |
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} |
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layer { |
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name: "relu5_1" |
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type: "ReLU" |
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bottom: "conv5_1" |
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top: "conv5_1" |
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} |
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layer { |
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name: "conv5_2" |
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type: "Convolution" |
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bottom: "conv5_1" |
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top: "conv5_2" |
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param { |
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lr_mult: 1 |
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decay_mult: 1 |
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} |
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param { |
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lr_mult: 2 |
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decay_mult: 0 |
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} |
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convolution_param { |
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num_output: 512 |
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pad: 1 |
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kernel_size: 3 |
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stride: 1 |
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weight_filler { |
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type: "gaussian" |
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std: 0.01 |
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} |
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bias_filler { |
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type: "constant" |
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value: 0 |
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} |
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} |
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} |
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layer { |
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name: "relu5_2" |
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type: "ReLU" |
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bottom: "conv5_2" |
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top: "conv5_2" |
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} |
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layer { |
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name: "conv5_3" |
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type: "Convolution" |
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bottom: "conv5_2" |
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top: "conv5_3" |
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param { |
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lr_mult: 1 |
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decay_mult: 1 |
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} |
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param { |
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lr_mult: 2 |
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decay_mult: 0 |
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} |
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convolution_param { |
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num_output: 512 |
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pad: 1 |
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kernel_size: 3 |
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stride: 1 |
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weight_filler { |
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type: "gaussian" |
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std: 0.01 |
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} |
|
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bias_filler { |
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|
type: "constant" |
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value: 0 |
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} |
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} |
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} |
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layer { |
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name: "relu5_3" |
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type: "ReLU" |
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bottom: "conv5_3" |
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top: "conv5_3" |
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} |
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layer { |
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name: "pool5" |
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type: "Pooling" |
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bottom: "conv5_3" |
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top: "pool5" |
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pooling_param { |
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pool: MAX |
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kernel_size: 2 |
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stride: 2 |
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} |
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} |
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layer { |
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name: "fc6_cs" |
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type: "Convolution" |
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bottom: "pool5" |
|
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top: "fc6_cs" |
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param { |
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lr_mult: 1 |
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decay_mult: 1 |
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} |
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param { |
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lr_mult: 2 |
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decay_mult: 0 |
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} |
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convolution_param { |
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num_output: 4096 |
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pad: 0 |
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kernel_size: 7 |
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stride: 1 |
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weight_filler { |
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|
type: "gaussian" |
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std: 0.01 |
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} |
|
|
bias_filler { |
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|
type: "constant" |
|
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value: 0 |
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} |
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} |
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} |
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layer { |
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name: "relu6_cs" |
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type: "ReLU" |
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bottom: "fc6_cs" |
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top: "fc6_cs" |
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} |
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layer { |
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name: "fc7_cs" |
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type: "Convolution" |
|
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bottom: "fc6_cs" |
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top: "fc7_cs" |
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param { |
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lr_mult: 1 |
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decay_mult: 1 |
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} |
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param { |
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lr_mult: 2 |
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decay_mult: 0 |
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} |
|
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convolution_param { |
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num_output: 4096 |
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pad: 0 |
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kernel_size: 1 |
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stride: 1 |
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weight_filler { |
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|
type: "gaussian" |
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std: 0.01 |
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} |
|
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bias_filler { |
|
|
type: "constant" |
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value: 0 |
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} |
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} |
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} |
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layer { |
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name: "relu7_cs" |
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type: "ReLU" |
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bottom: "fc7_cs" |
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top: "fc7_cs" |
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} |
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layer { |
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name: "score_fr" |
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type: "Convolution" |
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bottom: "fc7_cs" |
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top: "score_fr" |
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param { |
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lr_mult: 1 |
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decay_mult: 1 |
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} |
|
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param { |
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lr_mult: 2 |
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decay_mult: 0 |
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} |
|
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convolution_param { |
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num_output: 20 |
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pad: 0 |
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kernel_size: 1 |
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weight_filler { |
|
|
type: "xavier" |
|
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} |
|
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bias_filler { |
|
|
type: "constant" |
|
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} |
|
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} |
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} |
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layer { |
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name: "upscore2" |
|
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type: "Deconvolution" |
|
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bottom: "score_fr" |
|
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top: "upscore2" |
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param { |
|
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lr_mult: 1 |
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} |
|
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convolution_param { |
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num_output: 20 |
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bias_term: false |
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kernel_size: 4 |
|
|
stride: 2 |
|
|
weight_filler { |
|
|
type: "xavier" |
|
|
} |
|
|
bias_filler { |
|
|
type: "constant" |
|
|
} |
|
|
} |
|
|
} |
|
|
layer { |
|
|
name: "score_pool4" |
|
|
type: "Convolution" |
|
|
bottom: "pool4" |
|
|
top: "score_pool4" |
|
|
param { |
|
|
lr_mult: 1 |
|
|
decay_mult: 1 |
|
|
} |
|
|
param { |
|
|
lr_mult: 2 |
|
|
decay_mult: 0 |
|
|
} |
|
|
convolution_param { |
|
|
num_output: 20 |
|
|
pad: 0 |
|
|
kernel_size: 1 |
|
|
weight_filler { |
|
|
type: "xavier" |
|
|
} |
|
|
bias_filler { |
|
|
type: "constant" |
|
|
} |
|
|
} |
|
|
} |
|
|
layer { |
|
|
name: "score_pool4c" |
|
|
type: "Crop" |
|
|
bottom: "score_pool4" |
|
|
bottom: "upscore2" |
|
|
top: "score_pool4c" |
|
|
crop_param { |
|
|
axis: 2 |
|
|
offset: 5 |
|
|
} |
|
|
} |
|
|
layer { |
|
|
name: "fuse_pool4" |
|
|
type: "Eltwise" |
|
|
bottom: "upscore2" |
|
|
bottom: "score_pool4c" |
|
|
top: "fuse_pool4" |
|
|
eltwise_param { |
|
|
operation: SUM |
|
|
} |
|
|
} |
|
|
layer { |
|
|
name: "upscore_pool4" |
|
|
type: "Deconvolution" |
|
|
bottom: "fuse_pool4" |
|
|
top: "upscore_pool4" |
|
|
param { |
|
|
lr_mult: 1 |
|
|
} |
|
|
convolution_param { |
|
|
num_output: 20 |
|
|
bias_term: false |
|
|
kernel_size: 4 |
|
|
stride: 2 |
|
|
weight_filler { |
|
|
type: "xavier" |
|
|
} |
|
|
bias_filler { |
|
|
type: "constant" |
|
|
} |
|
|
} |
|
|
} |
|
|
layer { |
|
|
name: "score_pool3" |
|
|
type: "Convolution" |
|
|
bottom: "pool3" |
|
|
top: "score_pool3" |
|
|
param { |
|
|
lr_mult: 1 |
|
|
decay_mult: 1 |
|
|
} |
|
|
param { |
|
|
lr_mult: 2 |
|
|
decay_mult: 0 |
|
|
} |
|
|
convolution_param { |
|
|
num_output: 20 |
|
|
pad: 0 |
|
|
kernel_size: 1 |
|
|
weight_filler { |
|
|
type: "xavier" |
|
|
} |
|
|
bias_filler { |
|
|
type: "constant" |
|
|
} |
|
|
} |
|
|
} |
|
|
layer { |
|
|
name: "score_pool3c" |
|
|
type: "Crop" |
|
|
bottom: "score_pool3" |
|
|
bottom: "upscore_pool4" |
|
|
top: "score_pool3c" |
|
|
crop_param { |
|
|
axis: 2 |
|
|
offset: 9 |
|
|
} |
|
|
} |
|
|
layer { |
|
|
name: "fuse_pool3" |
|
|
type: "Eltwise" |
|
|
bottom: "upscore_pool4" |
|
|
bottom: "score_pool3c" |
|
|
top: "fuse_pool3" |
|
|
eltwise_param { |
|
|
operation: SUM |
|
|
} |
|
|
} |
|
|
layer { |
|
|
name: "upscore8" |
|
|
type: "Deconvolution" |
|
|
bottom: "fuse_pool3" |
|
|
top: "upscore8" |
|
|
param { |
|
|
lr_mult: 1 |
|
|
} |
|
|
convolution_param { |
|
|
num_output: 20 |
|
|
bias_term: false |
|
|
kernel_size: 16 |
|
|
stride: 8 |
|
|
weight_filler { |
|
|
type: "xavier" |
|
|
} |
|
|
bias_filler { |
|
|
type: "constant" |
|
|
} |
|
|
} |
|
|
} |
|
|
layer { |
|
|
name: "score" |
|
|
type: "Crop" |
|
|
bottom: "upscore8" |
|
|
bottom: "data" |
|
|
top: "score" |
|
|
crop_param { |
|
|
axis: 2 |
|
|
offset: 31 |
|
|
} |
|
|
} |
|
|
|