Counterfeit money devalues the currency it is meant to copy. Many economists believe that counterfeit money is one of the worst things that can happen to a country's economy, as it undermines trust in the currency's value. The US Treasury and the Federal Reserve have control over the money supply. A
Fake Currency Detection
Counterfeit money devalues the currency it is meant to copy. Many economists believe that counterfeit money is one of the worst things that can happen to a country's economy, as it undermines trust in the currency's value. The US Treasury and the Federal Reserve have control over the money supply. And by forging the money, one is stealing the thunder of federal government. They don't take it lightly. A highresolution printer can now make a counterfeit note that looks very similar to the real one, thanks to advances in technology. The net outcome of counterfeit money is Inflation.Counterfeiting currencies has been easier since the introduction of highly advanced reprographic processes, such as laser printing. Clearly, counterfeit moneys identification is critical not just for business owners, but also for consumers. This project proposes a software working on python and Deep Learning and using image processing technique to automatic detection and recognition of counterfeit currency.
The project's main goal is to use a Machine Learning Algorithm to automatically identify fraudulent US dollar notes. Despite the fact that there were other techniques available, this method was created to address the shortcomings of the prior methods. Following are the objectives of this system.
The acquisition of forged documents is required for many programs such as Banking, Selling Goods. Manual counting and fraudulent identification are time-consuming task. Therefore, the system of obtaining forged documents in US takes US counterfeit money according to certain security features with the help of a system that can determine whether the Banknote is genuine or not.
All images are processed using Computer Viewing Techniques. Feature extraction is done using the cv2 module. The SVM algorithm is used for features, so the separation is done with Vector Machine support. After that, the CNN model is made. This uses several deeper layers to extract the features. The test image is selected, and the image elements are extracted in pixels. These selected image features are compared to the actual features of the note. If the analogy is shown as real money, if the opposite is also shown as fraudulent.
In our practice we use Deep Learning models such as Deep Neural Network and Convolutional Neural Network (CNN). Deep learning methods are able to capture the complex relationship between millions of pixels. CNN is commonly used in computer viewing, but recently used in image segregation functions CNN is made up of two main components:
This project will help in identification of counterfeit currency the main idea of the project is based on key features of currency that are difficult to counterfeit
The proposed system will declare result after processing the currency note and predict whether the currency is real or fake.
we will design a system that detects fake currency using pythn language with image proccessing techniques and it will help detect the fake notes
| Item Name | Type | No. of Units | Per Unit Cost (in Rs) | Total (in Rs) |
|---|---|---|---|---|
| laptop | Equipment | 1 | 60000 | 60000 |
| DATASET | Equipment | 1 | 10000 | 10000 |
| Total in (Rs) | 70000 |
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