c#中手写数字的神经网络识别

本文关键字:神经网络 识别 数字 | 更新日期: 2023-09-27 18:04:09

我已经阅读了一个名为vietdungiith的代码项目贡献者关于c#中手写数字识别的神经网络的非常好的代码项目文章。

项目链接:

http://www.codeproject.com/Articles/143059/Neural-Network-for-Recognition-of-Handwritten-Digi

但是,提供了一个代码示例,我运行了代码,但是,我有这个错误'格式异常未处理'。

在Preferences.cs文件中

private void Get(string lpAppName, string lpKeyName, out double nDefault)
{
       nDefault = Convert.ToDouble(m_Inifile.IniReadValue(lpAppName, lpKeyName));
       return; 
}

以上代码行产生运行时异常。

System.FormatException was unhandled
  HResult=-2146233033
  Message=Input string was not in a correct format.
  Source=mscorlib
  StackTrace:
       at System.Number.ParseDouble(String value, NumberStyles options, NumberFormatInfo numfmt)
       at System.Convert.ToDouble(String value)
       at NeuralNetworkLibrary.Preferences.Get(String lpAppName, String lpKeyName, Double& nDefault) in c:'Users'PC_USER'Downloads'Example'Code Project'source'HandwrittenRecognition'NeuralNetworkLibrary'ArchiveSerialization'Preferences.cs:line 178
       at NeuralNetworkLibrary.Preferences.ReadIniFile() in c:'Users'PC_USER'Downloads'Example'Code Project'source'HandwrittenRecognition'NeuralNetworkLibrary'ArchiveSerialization'Preferences.cs:line 109
       at NeuralNetworkLibrary.Preferences..ctor() in c:'Users'PC_USER'Downloads'Example'Code Project'source'HandwrittenRecognition'NeuralNetworkLibrary'ArchiveSerialization'Preferences.cs:line 97
       at HandwrittenRecogniration.Mainform..ctor() in c:'Users'PC_USER'Downloads'Example'Code Project'source'HandwrittenRecognition'HandwrittenRecognition'Mainform.cs:line 66
       at HandwrittenRecogniration.Program.Main() in c:'Users'PC_USER'Downloads'Example'Code Project'source'HandwrittenRecognition'HandwrittenRecognition'Program.cs:line 18
       at System.AppDomain._nExecuteAssembly(RuntimeAssembly assembly, String[] args)
       at System.AppDomain.ExecuteAssembly(String assemblyFile, Evidence assemblySecurity, String[] args)
       at Microsoft.VisualStudio.HostingProcess.HostProc.RunUsersAssembly()
       at System.Threading.ThreadHelper.ThreadStart_Context(Object state)
       at System.Threading.ExecutionContext.RunInternal(ExecutionContext executionContext, ContextCallback callback, Object state, Boolean preserveSyncCtx)
       at System.Threading.ExecutionContext.Run(ExecutionContext executionContext, ContextCallback callback, Object state, Boolean preserveSyncCtx)
       at System.Threading.ExecutionContext.Run(ExecutionContext executionContext, ContextCallback callback, Object state)
       at System.Threading.ThreadHelper.ThreadStart()
  InnerException: 

这个问题没有足够的答案。所以,我想知道是否有人在运行这个项目时遇到了这个问题?

Full Preferences.cs如下。

using System;
namespace NeuralNetworkLibrary
{
    public class Preferences
    {
        public const int g_cImageSize = 28;
        public const int g_cVectorSize = 29;
        public int m_cNumBackpropThreads;
        public uint m_nMagicTrainingLabels;
        public uint m_nMagicTrainingImages;
        public uint m_nItemsTrainingLabels;
        public uint m_nItemsTrainingImages;
        public int m_cNumTestingThreads;
        public int m_nMagicTestingLabels;
        public int m_nMagicTestingImages;
        public uint m_nItemsTestingLabels;
        public uint m_nItemsTestingImages;
        public uint m_nRowsImages;
        public uint m_nColsImages;
        public int m_nMagWindowSize;
        public int m_nMagWindowMagnification;
        public double m_dInitialEtaLearningRate;
        public double m_dLearningRateDecay;
        public double m_dMinimumEtaLearningRate;
        public uint m_nAfterEveryNBackprops;
        // for limiting the step size in backpropagation, since we are using second order
        // "Stochastic Diagonal Levenberg-Marquardt" update algorithm.  See Yann LeCun 1998
        // "Gradianet-Based Learning Applied to Document Recognition" at page 41
        public double m_dMicronLimitParameter;
        public uint m_nNumHessianPatterns;
        // for distortions of the input image, in an attempt to improve generalization
        public double m_dMaxScaling;  // as a percentage, such as 20.0 for plus/minus 20%
        public double m_dMaxRotation;  // in degrees, such as 20.0 for plus/minus rotations of 20 degrees
        public double m_dElasticSigma;  // one sigma value for randomness in Simard's elastic distortions
        public double m_dElasticScaling;  // after-smoohting scale factor for Simard's elastic distortions
        private IniFile m_Inifile;
        ////////////
        public Preferences()
        {
            // set default values
            m_nMagicTrainingLabels = 0x00000801;
            m_nMagicTrainingImages = 0x00000803;
            m_nItemsTrainingLabels = 60000;
            m_nItemsTrainingImages = 60000;
            m_nMagicTestingLabels = 0x00000801;
            m_nMagicTestingImages = 0x00000803;
            m_nItemsTestingLabels = 10000;
            m_nItemsTestingImages = 10000;
            m_nRowsImages = g_cImageSize;
            m_nColsImages = g_cImageSize;
            m_nMagWindowSize = 5;
            m_nMagWindowMagnification = 8;
            m_dInitialEtaLearningRate = 0.001;
            m_dLearningRateDecay = 0.794328235;  // 0.794328235 = 0.001 down to 0.00001 in 20 epochs 
            m_dMinimumEtaLearningRate = 0.00001;
            m_nAfterEveryNBackprops = 60000;
            m_cNumBackpropThreads = 2;
            m_cNumTestingThreads = 1;
            // parameters for controlling distortions of input image
            m_dMaxScaling = 15.0;  // like 20.0 for 20%
            m_dMaxRotation = 15.0;  // like 20.0 for 20 degrees
            m_dElasticSigma = 8.0;  // higher numbers are more smooth and less distorted; Simard uses 4.0
            m_dElasticScaling = 0.5;  // higher numbers amplify the distortions; Simard uses 34 (sic, maybe 0.34 ??)
            // for limiting the step size in backpropagation, since we are using second order
            // "Stochastic Diagonal Levenberg-Marquardt" update algorithm.  See Yann LeCun 1998
            // "Gradient-Based Learning Applied to Document Recognition" at page 41
            m_dMicronLimitParameter = 0.10;  // since we divide by this, update can never be more than 10x current eta
            m_nNumHessianPatterns = 500;  // number of patterns used to calculate the diagonal Hessian
            String path = System.IO.Directory.GetCurrentDirectory() + "''Data''Default-ini.ini";
            m_Inifile = new IniFile(path);
            ReadIniFile();
        }
        public void ReadIniFile()
        {
            // now read values from the ini file
            String tSection;
            // Neural Network parameters
            tSection = "Neural Network Parameters";
            Get(tSection, "Initial learning rate (eta)", out m_dInitialEtaLearningRate);
            Get(tSection, "Minimum learning rate (eta)", out m_dMinimumEtaLearningRate);
            Get(tSection, "Rate of decay for learning rate (eta)", out m_dLearningRateDecay);
            Get(tSection, "Decay rate is applied after this number of backprops", out m_nAfterEveryNBackprops);
            Get(tSection, "Number of backprop threads", out m_cNumBackpropThreads);
            Get(tSection, "Number of testing threads", out m_cNumTestingThreads);
            Get(tSection, "Number of patterns used to calculate Hessian", out m_nNumHessianPatterns);
            Get(tSection, "Limiting divisor (micron) for learning rate amplification (like 0.10 for 10x limit)", out m_dMicronLimitParameter);

            // Neural Network Viewer parameters
            tSection = "Neural Net Viewer Parameters";
            Get(tSection, "Size of magnification window", out m_nMagWindowSize);
            Get(tSection, "Magnification factor for magnification window", out m_nMagWindowMagnification);

            // MNIST data collection parameters
            tSection = "MNIST Database Parameters";
            Get(tSection, "Training images magic number", out m_nMagicTrainingImages);
            Get(tSection, "Training images item count", out m_nItemsTrainingImages);
            Get(tSection, "Training labels magic number", out m_nMagicTrainingLabels);
            Get(tSection, "Training labels item count", out m_nItemsTrainingLabels);
            Get(tSection, "Testing images magic number", out m_nMagicTestingImages);
            Get(tSection, "Testing images item count", out m_nItemsTestingImages);
            Get(tSection, "Testing labels magic number", out m_nMagicTestingLabels);
            Get(tSection, "Testing labels item count", out m_nItemsTestingLabels);
            // these two are basically ignored
            uint uiCount = g_cImageSize;
            Get(tSection, "Rows per image", out uiCount);
            m_nRowsImages = uiCount;
            uiCount = g_cImageSize;
            Get(tSection, "Columns per image", out uiCount);
            m_nColsImages = uiCount;

            // parameters for controlling pattern distortion during backpropagation
            tSection = "Parameters for Controlling Pattern Distortion During Backpropagation";
            Get(tSection, "Maximum scale factor change (percent, like 20.0 for 20%)", out m_dMaxScaling);
            Get(tSection, "Maximum rotational change (degrees, like 20.0 for 20 degrees)", out m_dMaxRotation);
            Get(tSection, "Sigma for elastic distortions (higher numbers are more smooth and less distorted; Simard uses 4.0)", out m_dElasticSigma);
            Get(tSection, "Scaling for elastic distortions (higher numbers amplify distortions; Simard uses 0.34)", out m_dElasticScaling);
        }
        private void Get(string lpAppName, string lpKeyName, out int nDefault)
        {
            nDefault = Convert.ToInt32(m_Inifile.IniReadValue(lpAppName, lpKeyName));
            return;
        }
        private void Get(string lpAppName, string lpKeyName, out uint nDefault)
        {
            nDefault = Convert.ToUInt32(m_Inifile.IniReadValue(lpAppName, lpKeyName));
            return;
        }
        private void Get(string lpAppName, string lpKeyName, out double nDefault)
        {
               nDefault = Convert.ToDouble(m_Inifile.IniReadValue(lpAppName, lpKeyName));
               return;
        }
        private void Get(string lpAppName, string lpKeyName, out byte nDefault)
        {
           nDefault = Convert.ToByte(m_Inifile.IniReadValue(lpAppName, lpKeyName));
           return ;
        }
        private void Get(string lpAppName, string lpKeyName, out string nDefault)
        {
            nDefault = m_Inifile.IniReadValue(lpAppName, lpKeyName);
            return;
        }
        private void Get(string lpAppName, string lpKeyName, out bool nDefault)
        {
            nDefault = Convert.ToBoolean(m_Inifile.IniReadValue(lpAppName, lpKeyName));
            return;
        }
    }
}

c#中手写数字的神经网络识别

在这种情况下,问题出在默认的。ini文件的小数点上。

nDefault = Convert.ToDouble(m_Inifile.IniReadValue(lpAppName, lpKeyName), CultureInfo.InvariantCulture);