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Image Recognition with Neural Networks

, 30 Oct 2007 CPOL
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This article contains a brief description of BackPropagation Artificial Neural Network and its implementation for Image Recognition
Screenshot - screen211.png


Artificial Neural Networks are a recent development tool that are modeled from biological neural networks. The powerful side of this new tool is its ability to solve problems that are very hard to be solved by traditional computing methods (e.g. by algorithms). This work briefly explains Artificial Neural Networks and their applications, describing how to implement a simple ANN for image recognition.


I will try to make the idea clear to the reader who is just interested in the topic.

About Artificial Neural Networks (ANNs)

Artificial Neural Networks (ANNs) are a new approach that follow a different way from traditional computing methods to solve problems. Since conventional computers use algorithmic approach, if the specific steps that the computer needs to follow are not known, the computer cannot solve the problem. That means, traditional computing methods can only solve the problems that we have already understood and knew how to solve. However, ANNs are, in some way, much more powerful because they can solve problems that we do not exactly know how to solve. That's why, of late, their usage is spreading over a wide range of area including, virus detection, robot control, intrusion detection systems, pattern (image, fingerprint, noise..) recognition and so on.

ANNs have the ability to adapt, learn, generalize, cluster or organize data. There are many structures of ANNs including, Percepton, Adaline, Madaline, Kohonen, BackPropagation and many others. Probably, BackPropagation ANN is the most commonly used, as it is very simple to implement and effective. In this work, we will deal with BackPropagation ANNs.

BackPropagation ANNs contain one or more layers each of which are linked to the next layer. The first layer is called the "input layer" which meets the initial input (e.g. pixels from a letter) and so does the last one "output layer" which usually holds the input's identifier (e.g. name of the input letter). The layers between input and output layers are called "hidden layer(s)" which only propagate the previous layer's outputs to the next layer and [back] propagates the following layer's error to the previous layer. Actually, these are the main operations of training a BackPropagation ANN which follows a few steps.

A typical BackPropagation ANN is as depicted below. The black nodes (on the extreme left) are the initial inputs. Training such a network involves two phases. In the first phase, the inputs are propagated forward to compute the outputs for each output node. Then, each of these outputs are subtracted from its desired output, causing an error [an error for each output node]. In the second phase, each of these output errors is passed backward and the weights are fixed. These two phases is continued until the sum of [square of output errors] reaches an acceptable value.

Screenshot - fig1_nnet_thinner.png


The network layers in the figure above are implemented as arrays of structs. The nodes of the layers are implemented as follows:

struct PreInput
    public double Value;
    public double[] Weights;            

struct Input
    public double InputSum;                
    public double Output;                
    public double Error;                
    public double[] Weights;        
struct Hidden        
    public double InputSum;                    
    public double Output;                
    public double Error;                
    public double[] Weights;        
struct Output<T> where T : IComparable<T>         
    public double InputSum;                
    public double output;                
    public double Error;                
    public double Target;     
    public T Value;   

The layers in the figure are implemented as follows (for a three layer network):

private PreInput[] PreInputLayer;
private Input[] InputLayer;
private Hidden[] HiddenLayer;
private Output<string>[] OutputLayer;

Training the network can be summarized as follows:

  • Apply input to the network.
  • Calculate the output.
  • Compare the resulting output with the desired output for the given input. This is called the error.
  • Modify the weights for all neurons using the error.
  • Repeat the process until the error reaches an acceptable value (e.g. error < 1%), which means that the NN was trained successfully, or if we reach a maximum count of iterations, which means that the NN training was not successful.

It is represented as shown below:

void TrainNetwork(TrainingSet,MaxError)
          foreach(Pattern in TrainingSet)
               ForwardPropagate(Pattern);//calculate output 
               BackPropagate()//fix errors, update weights

This is implemented as follows:

public bool Train()
    double currentError = 0;
    int currentIteration = 0;
    NeuralEventArgs Args = new NeuralEventArgs() ;

        currentError = 0;
        foreach (KeyValuePair<T, double[]> p in TrainingSet)
            NeuralNet.ForwardPropagate(p.Value, p.Key);
            currentError += NeuralNet.GetError();
        if (IterationChanged != null && currentIteration % 5 == 0)
            Args.CurrentError = currentError;
            Args.CurrentIteration = currentIteration;
            IterationChanged(this, Args);

    } while (currentError > maximumError && currentIteration < 
    maximumIteration && !Args.Stop);

    if (IterationChanged != null)
        Args.CurrentError = currentError;
        Args.CurrentIteration = currentIteration;
        IterationChanged(this, Args);

    if (currentIteration >= maximumIteration || Args.Stop)   
        return false;//Training Not Successful
    return true;

Where ForwardPropagate(..) and BackPropagate() methods are as shown for a three layer network:

private void ForwardPropagate(double[] pattern, T output)
    int i, j;
    double total;
    //Apply input to the network
    for (i = 0; i < PreInputNum; i++)
        PreInputLayer[i].Value = pattern[i];
    //Calculate The First(Input) Layer's Inputs and Outputs
    for (i = 0; i < InputNum; i++)
        total = 0.0;
        for (j = 0; j < PreInputNum; j++)
            total += PreInputLayer[j].Value * PreInputLayer[j].Weights[i];
        InputLayer[i].InputSum = total;
        InputLayer[i].Output = F(total);
    //Calculate The Second(Hidden) Layer's Inputs and Outputs
    for (i = 0; i < HiddenNum; i++)
        total = 0.0;
        for (j = 0; j < InputNum; j++)
            total += InputLayer[j].Output * InputLayer[j].Weights[i];

        HiddenLayer[i].InputSum = total;
        HiddenLayer[i].Output = F(total);
    //Calculate The Third(Output) Layer's Inputs, Outputs, Targets and Errors
    for (i = 0; i < OutputNum; i++)
        total = 0.0;
        for (j = 0; j < HiddenNum; j++)
            total += HiddenLayer[j].Output * HiddenLayer[j].Weights[i];

        OutputLayer[i].InputSum = total;
        OutputLayer[i].output = F(total);
        OutputLayer[i].Target = OutputLayer[i].Value.CompareTo(output) == 0 ? 1.0 : 0.0;
        OutputLayer[i].Error = (OutputLayer[i].Target - OutputLayer[i].output) *
                                       (OutputLayer[i].output) * (1 - OutputLayer[i].output);
private void BackPropagate()
    int i, j;
    double total;
    //Fix Hidden Layer's Error
    for (i = 0; i < HiddenNum; i++)
        total = 0.0;
        for (j = 0; j < OutputNum; j++)
            total += HiddenLayer[i].Weights[j] * OutputLayer[j].Error;
        HiddenLayer[i].Error = total;
    //Fix Input Layer's Error
    for (i = 0; i < InputNum; i++)
        total = 0.0;
        for (j = 0; j < HiddenNum; j++)
            total += InputLayer[i].Weights[j] * HiddenLayer[j].Error;
        InputLayer[i].Error = total;
    //Update The First Layer's Weights
    for (i = 0; i < InputNum; i++)
        for(j = 0; j < PreInputNum; j++)
            PreInputLayer[j].Weights[i] +=
                LearningRate * InputLayer[i].Error * PreInputLayer[j].Value;
    //Update The Second Layer's Weights
    for (i = 0; i < HiddenNum; i++)
        for (j = 0; j < InputNum; j++)
            InputLayer[j].Weights[i] +=
                LearningRate * HiddenLayer[i].Error * InputLayer[j].Output;
    //Update The Third Layer's Weights
    for (i = 0; i < OutputNum; i++)
        for (j = 0; j < HiddenNum; j++)
            HiddenLayer[j].Weights[i] +=
                LearningRate * OutputLayer[i].Error * HiddenLayer[j].Output;

Testing the App

The program trains the network using bitmap images that are located in a folder. This folder must be in the following format:

  • There must be one (input) folder that contains input images [*.bmp].
  • Each image's name is the target (or output) value for the network (the pixel values of the image are the inputs, of course) .

As testing the classes requires to train the network first, there must be a folder in this format. "PATTERNS" and "ICONS" folders [depicted below] in the Debug folder fit this format.

Screenshot - fig2_sampleInput_thinner.png Screenshot - fig3_sampleInput_thinner.png


  • 30th September, 2007: Simplified the app
  • 24th June, 2007: Initial Release

References & External Links


This article, along with any associated source code and files, is licensed under The Code Project Open License (CPOL)


About the Author

Murat Firat
Software Developer (Senior)
Turkey Turkey
Has BS degree on computer science, working as software engineer in istanbul.

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Comments and Discussions

GeneralRe: Image size and accuracy Pin
Murat Firat27-Sep-08 11:32
memberMurat Firat27-Sep-08 11:32 
GeneralCalculating output layer error Pin
jack_wind11-Sep-08 23:32
memberjack_wind11-Sep-08 23:32 
GeneralRe: Calculating output layer error Pin
Murat Firat18-Sep-08 6:09
memberMurat Firat18-Sep-08 6:09 
Questionhowto Apply BackPropagation in FingerPrint image matching? Pin
swdev.bali27-Aug-08 1:22
memberswdev.bali27-Aug-08 1:22 
AnswerRe: howto Apply BackPropagation in FingerPrint image matching? Pin
Murat Firat1-Sep-08 4:52
memberMurat Firat1-Sep-08 4:52 
GeneralRe: howto Apply BackPropagation in FingerPrint image matching? Pin
swdev.bali1-Sep-08 17:44
memberswdev.bali1-Sep-08 17:44 
GeneralRe: howto Apply BackPropagation in FingerPrint image matching? Pin
Murat Firat2-Sep-08 17:36
memberMurat Firat2-Sep-08 17:36 
QuestionGreat aplication - Generalization Pin
ignacio.7811-Aug-08 13:58
memberignacio.7811-Aug-08 13:58 
AnswerRe: Great aplication - Generalization Pin
Murat Firat15-Aug-08 18:54
memberMurat Firat15-Aug-08 18:54 
GeneralUnable to download Pin
shery_sa9-Jul-08 9:53
membershery_sa9-Jul-08 9:53 
QuestionImageProcessing.ToMatrix Pin
denny_cucu14-Jun-08 23:30
memberdenny_cucu14-Jun-08 23:30 
AnswerRe: ImageProcessing.ToMatrix Pin
Murat Firat17-Jun-08 11:05
memberMurat Firat17-Jun-08 11:05 
GeneralRe: ImageProcessing.ToMatrix Pin
denny_cucu28-Jun-08 23:25
memberdenny_cucu28-Jun-08 23:25 
GeneralRe: ImageProcessing.ToMatrix Pin
Himdevi24-Mar-12 21:18
memberHimdevi24-Mar-12 21:18 
M still unable to understand y this .59 & .3 values r used..
pls rply asap
GeneralRe: ImageProcessing.ToMatrix Pin
Murat Firat25-Mar-12 12:55
memberMurat Firat25-Mar-12 12:55 
GeneralRe: ImageProcessing.ToMatrix Pin
Himdevi26-Mar-12 5:22
memberHimdevi26-Mar-12 5:22 
QuestionImage Detection Pin
YehudaG12-May-08 5:12
memberYehudaG12-May-08 5:12 
Questionwhat is the initial value of output layer??? Pin
sandipmuk7-May-08 22:18
membersandipmuk7-May-08 22:18 
AnswerRe: what is the initial value of output layer??? Pin
Murat Firat11-May-08 21:22
memberMurat Firat11-May-08 21:22 
Questionwhats the network archeticture? Pin
jamilkhan00723-Apr-08 22:46
memberjamilkhan00723-Apr-08 22:46 
GeneralRe: whats the network archeticture? Pin
Murat Firat23-Apr-08 23:32
memberMurat Firat23-Apr-08 23:32 
QuestionRe: whats the network archeticture? Pin
jamilkhan00727-Apr-08 0:52
memberjamilkhan00727-Apr-08 0:52 
GeneralRe: whats the network archeticture? Pin
Murat Firat27-Apr-08 12:05
memberMurat Firat27-Apr-08 12:05 
GeneralRe: whats the network archeticture? Pin
jamilkhan0072-May-08 23:29
memberjamilkhan0072-May-08 23:29 
QuestionFace Detection Nueral Network? Pin
jamilkhan00718-Apr-08 2:53
memberjamilkhan00718-Apr-08 2:53 
QuestionImage Recognition Advanced Engine Development Pin
ankswe15-Apr-08 4:51
memberankswe15-Apr-08 4:51 
GeneralExcellent! Pin
newbie0827-Mar-08 2:00
membernewbie0827-Mar-08 2:00 
GeneralRe: Excellent! Pin
Murat Firat28-Mar-08 22:52
memberMurat Firat28-Mar-08 22:52 
GeneralYou are awesome! Pin
jadeburton20-Mar-08 15:52
memberjadeburton20-Mar-08 15:52 
GeneralRe: You are awesome! Pin
Murat Firat23-Mar-08 6:29
memberMurat Firat23-Mar-08 6:29 
Generalpattern recognition Pin
K|nS|ayer28-Feb-08 22:01
memberK|nS|ayer28-Feb-08 22:01 
AnswerRe: pattern recognition Pin
Murat Firat29-Feb-08 22:29
memberMurat Firat29-Feb-08 22:29 
Questionpattern recognition method Pin
rie athena6-Feb-08 15:00
memberrie athena6-Feb-08 15:00 
AnswerRe: pattern recognition method Pin
Murat Firat7-Feb-08 8:01
memberMurat Firat7-Feb-08 8:01 
GeneralThreshold Value Pin
cbc100031-Dec-07 15:40
membercbc100031-Dec-07 15:40 
AnswerRe: Threshold Value Pin
Murat Firat1-Jan-08 3:14
memberMurat Firat1-Jan-08 3:14 
GeneralAbout the pattern and input Pin
randy1014198326-Nov-07 3:51
memberrandy1014198326-Nov-07 3:51 
GeneralRe: About the pattern and input Pin
Murat Firat26-Nov-07 5:26
memberMurat Firat26-Nov-07 5:26 
GeneralAbout demo project Pin
newrocker24-Nov-07 21:27
membernewrocker24-Nov-07 21:27 
AnswerRe: About demo project Pin
Murat Firat25-Nov-07 11:08
memberMurat Firat25-Nov-07 11:08 
GeneralQuestions Pin
randy1014198324-Nov-07 17:43
memberrandy1014198324-Nov-07 17:43 
GeneralRe: Questions Pin
Murat Firat25-Nov-07 11:01
memberMurat Firat25-Nov-07 11:01 
QuestionDoubt in Input and Hidden Node. Pin
Vimalr18-Nov-07 20:24
memberVimalr18-Nov-07 20:24 
AnswerRe: Doubt in Input and Hidden Node. Pin
Murat Firat19-Nov-07 2:09
memberMurat Firat19-Nov-07 2:09 
GeneralReg deciding the layer units Pin
i_coder15-Nov-07 7:57
memberi_coder15-Nov-07 7:57 
GeneralRe: Reg deciding the layer units Pin
Murat Firat15-Nov-07 21:15
memberMurat Firat15-Nov-07 21:15 
QuestionCan I use your Neural network implementation for this... Pin
Jean-Francois Dufour12-Nov-07 23:42
memberJean-Francois Dufour12-Nov-07 23:42 
AnswerRe: Can I use your Neural network implementation for this... Pin
Murat Firat13-Nov-07 9:36
memberMurat Firat13-Nov-07 9:36 
GeneralExcellent Pin
merlin98131-Oct-07 5:01
membermerlin98131-Oct-07 5:01 
GeneralRe: Excellent Pin
Murat Firat1-Nov-07 0:10
memberMurat Firat1-Nov-07 0:10 

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