Neural network 检查失败:如何在深层使用hdf5数据层?

Neural network 检查失败:如何在深层使用hdf5数据层?,neural-network,deep-learning,hdf5,caffe,Neural Network,Deep Learning,Hdf5,Caffe,我将列车和标签数据设置为data.mat。(我有200个训练数据,其中6000个特性和标签是(-1,+1),它们保存在data.mat中) 我试图在hdf5中转换数据(训练和测试),并使用以下方法运行Caffe: load input.mat hdf5write('my_data.h5', '/new_train_x', single( permute(reshape(new_train_x,[200, 6000, 1, 1]),[4:-1:1] ) )); hdf5write('my_data

我将列车和标签数据设置为
data.mat
。(我有200个训练数据,其中6000个特性和标签是(-1,+1),它们保存在data.mat中)

我试图在
hdf5
中转换数据(训练和测试),并使用以下方法运行Caffe:

load input.mat
hdf5write('my_data.h5', '/new_train_x', single( permute(reshape(new_train_x,[200, 6000, 1, 1]),[4:-1:1] ) ));
hdf5write('my_data.h5', '/label_train', single( permute(reshape(label_train,[200, 1, 1, 1]), [4:-1:1] ) ) , 'WriteMode', 'append' );
hdf5write('my_data_test.h5', '/test_x', single( permute(reshape(test_x,[77, 6000, 1, 1]),[4:-1:1] ) ));
hdf5write('my_data_test.h5', '/label_test', single( permute(reshape(label_test,[77, 1, 1, 1]), [4:-1:1] ) ) , 'WriteMode', 'append' );
(请参见有关在Matlab中将mat文件转换为hdf5的信息)

我的
train_val.prototxt
是:

  layer {
  type: "HDF5Data"
  name: "data"
  top: "new_train_x"     # note: same name as in HDF5
  top: "label_train"     # 
  hdf5_data_param {
    source: "file.txt"
    batch_size: 20
  }
  include { phase: TRAIN }
}
layer {
  type: "HDF5Data"
  name: "data"
  top: "test_x"     # note: same name as in HDF5
  top: "label_test"     # 
  hdf5_data_param {
    source: "file_test.txt"
    batch_size: 20
  }
  include { phase:TEST }
}

layer {
  name: "ip1"
  type: "InnerProduct"
  bottom: "new_train_x"
  top: "ip1"
  param {
    lr_mult: 1
  }
  param {
    lr_mult: 2
  }
  inner_product_param {
    num_output: 30
    weight_filler {
      type: "gaussian" # initialize the filters from a Gaussian
      std: 0.01 
    }
    bias_filler {
      type: "constant"
    }
  }
}
layer {
  name: "tanh1"
  type: "TanH"
  bottom: "ip1"
  top: "tanh1"
}

layer {
  name: "ip2"
  type: "InnerProduct"
  bottom: "tanh1"
  top: "ip2"
  param {
    lr_mult: 1
  }
  param {
    lr_mult: 2
  }
  inner_product_param {
    num_output: 1
    weight_filler {
      type: "gaussian" # initialize the filters from a Gaussian
      std: 0.01 
    }
    bias_filler {
      type: "constant"
    }
  }
}
layer {
  name: "loss"
  type: "TanH"
  bottom: "ip2"
  bottom: "label_train"
  top: "loss"
}
但我有个问题。它似乎无法读取我的输入数据

I1227 10:27:21.880826  7186 layer_factory.hpp:76] Creating layer data
I1227 10:27:21.880851  7186 net.cpp:110] Creating Layer data
I1227 10:27:21.880866  7186 net.cpp:433] data -> new_train_x
I1227 10:27:21.880893  7186 net.cpp:433] data -> label_train
I1227 10:27:21.880915  7186 hdf5_data_layer.cpp:81] Loading list of HDF5 filenames from: file.txt
I1227 10:27:21.880965  7186 hdf5_data_layer.cpp:95] Number of HDF5 files: 1
I1227 10:27:21.962596  7186 net.cpp:155] Setting up data
I1227 10:27:21.962702  7186 net.cpp:163] Top shape: 20 6000 1 1 (120000)
I1227 10:27:21.962738  7186 net.cpp:163] Top shape: 20 1 1 1 (20)
I1227 10:27:21.962772  7186 layer_factory.hpp:76] Creating layer ip1
I1227 10:27:21.962838  7186 net.cpp:110] Creating Layer ip1
I1227 10:27:21.962873  7186 net.cpp:477] ip1 <- new_train_x
I1227 10:27:21.962918  7186 net.cpp:433] ip1 -> ip1
I1227 10:27:21.979375  7186 net.cpp:155] Setting up ip1
I1227 10:27:21.979434  7186 net.cpp:163] Top shape: 20 30 (600)
I1227 10:27:21.979478  7186 layer_factory.hpp:76] Creating layer tanh1
I1227 10:27:21.979529  7186 net.cpp:110] Creating Layer tanh1
I1227 10:27:21.979557  7186 net.cpp:477] tanh1 <- ip1
I1227 10:27:21.979583  7186 net.cpp:433] tanh1 -> tanh1
I1227 10:27:21.979620  7186 net.cpp:155] Setting up tanh1
I1227 10:27:21.979650  7186 net.cpp:163] Top shape: 20 30 (600)
I1227 10:27:21.979670  7186 layer_factory.hpp:76] Creating layer ip2
I1227 10:27:21.979696  7186 net.cpp:110] Creating Layer ip2
I1227 10:27:21.979720  7186 net.cpp:477] ip2 <- tanh1
I1227 10:27:21.979746  7186 net.cpp:433] ip2 -> ip2
I1227 10:27:21.979796  7186 net.cpp:155] Setting up ip2
I1227 10:27:21.979825  7186 net.cpp:163] Top shape: 20 1 (20)
I1227 10:27:21.979854  7186 layer_factory.hpp:76] Creating layer loss
I1227 10:27:21.979881  7186 net.cpp:110] Creating Layer loss
I1227 10:27:21.979909  7186 net.cpp:477] loss <- ip2
I1227 10:27:21.979931  7186 net.cpp:477] loss <- label_train
I1227 10:27:21.979962  7186 net.cpp:433] loss -> loss
F1227 10:27:21.980006  7186 layer.hpp:374] Check failed: ExactNumBottomBlobs() == bottom.size() (1 vs. 2) TanH Layer takes 1 bottom blob(s) as input.
*** Check failure stack trace: ***
    @     0x7f44cbc68ea4  (unknown)
    @     0x7f44cbc68deb  (unknown)
    @     0x7f44cbc687bf  (unknown)
    @     0x7f44cbc6ba35  (unknown)
    @     0x7f44cbfd0ba8  caffe::Layer<>::CheckBlobCounts()
    @     0x7f44cbfed9da  caffe::Net<>::Init()
    @     0x7f44cbfef108  caffe::Net<>::Net()
    @     0x7f44cc03f71a  caffe::Solver<>::InitTrainNet()
    @     0x7f44cc040a51  caffe::Solver<>::Init()
    @     0x7f44cc040db9  caffe::Solver<>::Solver()
    @           0x41222d  caffe::GetSolver<>()
    @           0x408ed9  train()
    @           0x406741  main
    @     0x7f44ca997a40  (unknown)
    @           0x406f69  _start
    @              (nil)  (unknown)
Aborted (core dumped)
我有一个问题:

F1227 10:53:17.884419  9102 insert_splits.cpp:35] Unknown bottom blob 'new_train_x' (layer 'ip1', bottom index 0)
*** Check failure stack trace: ***
    @     0x7f502ab5dea4  (unknown)
    @     0x7f502ab5ddeb  (unknown)
    @     0x7f502ab5d7bf  (unknown)
    @     0x7f502ab60a35  (unknown)
    @     0x7f502af1d75b  caffe::InsertSplits()
    @     0x7f502aee19e9  caffe::Net<>::Init()
    @     0x7f502aee4108  caffe::Net<>::Net()
    @     0x7f502af35172  caffe::Solver<>::InitTestNets()
    @     0x7f502af35abd  caffe::Solver<>::Init()
    @     0x7f502af35db9  caffe::Solver<>::Solver()
    @           0x41222d  caffe::GetSolver<>()
    @           0x408ed9  train()
    @           0x406741  main
    @     0x7f502988ca40  (unknown)
    @           0x406f69  _start
    @              (nil)  (unknown)
Aborted (core dumped)
F1227 10:53:17.884419 9102插入分割。cpp:35]未知底部斑点“新序列”(层“ip1”,底部索引0)
***检查故障堆栈跟踪:***
@0x7f502ab5dea4(未知)
@0x7f502ab5ddeb(未知)
@0x7f502ab5d7bf(未知)
@0x7f502ab60a35(未知)
@0x7f502af1d75b caffe::InsertSplits()
@0x7f502aee19e9 caffe::Net::Init()
@0x7f502aee4108 caffe::Net::Net()
@0x7f502af35172 caffe::Solver::InitTestNets()
@0x7f502af35abd caffe::解算器::初始化()
@0x7f502af35db9 caffe::Solver::Solver()
@0x41222d caffe::GetSolver()
@0x408ed9列车()
@0x406741主
@0x7f502988ca40(未知)
@0x406f69_开始
@(无)(未知)
中止(堆芯转储)

非常感谢!!!!任何建议都将不胜感激

您的数据层仅为
阶段:列车
定义。我相信当caffe尝试构建测试时间网络(即
阶段:测试
网络)时,会发生错误。
您应该有一个包含测试数据的附加层:

layer {
  type: "HDF5Data"
  name: "data"
  top: "new_train_x"     # note: same name as in HDF5
  top: "label_train"     # 
  hdf5_data_param {
    source: "test_file.txt"
    batch_size: 20
  }
  include { phase: TEST } # do not forget TEST phase
}
顺便说一句,如果你不想在训练期间测试你的网络,你可以关闭这个选项。有关更多信息,请参阅


更新:
请原谅我直言不讳,你把事情搞得一团糟

  • “TanH”
    不是一个丢失层-它是一个神经元/激活层。它作为应用于线性层(conv/内积)的非线性。因此,它接受单个输入(底部blob)并输出单个blob(顶部)。
    损失层计算一个标量损失值,通常需要两个输入:预测和地面真实值进行比较
  • 您确实更改了您的网络,并为
    测试
    阶段添加了
    “HDF5Data”
    层,但该层输出了
    顶部:“TEST\u x”
    ,网络中没有任何层需要
    底部:“TEST\u x”
    您只有层需要
    “new\u train\u x”
    。。。
    “标签文本”
    也是如此

  • 我建议您使用更通用的名称(例如,
    x
    label
    )为训练和测试重新编写hdf5文件。只需使用不同的文件名来区分它们。这样,您的网络在两个阶段中都可以使用
    “x”
    “label”
    ,并且只根据阶段加载相应的数据集。

    我定义了测试阶段,但这两个阶段都不起作用,我仍然有相同的问题。i:(@ahmadnavidghanizadeh请发布您的prototxt和整个日志非常感谢您的时间和关注亲爱的shai。
    layer {
      type: "HDF5Data"
      name: "data"
      top: "new_train_x"     # note: same name as in HDF5
      top: "label_train"     # 
      hdf5_data_param {
        source: "test_file.txt"
        batch_size: 20
      }
      include { phase: TEST } # do not forget TEST phase
    }