DOI : 10.17577/IJERTV14IS120290
- Open Access
- Authors : Pranita Janpalliwar, Rohan Chandekar, Amit Khobragade, Muse Landge, Shruti Bucche, Prof. Ravindra Chilbule
- Paper ID : IJERTV14IS120290
- Volume & Issue : Volume 14, Issue 12 , December – 2025
- DOI : 10.17577/IJERTV14IS120290
- Published (First Online): 17-12-2025
- ISSN (Online) : 2278-0181
- Publisher Name : IJERT
- License:
This work is licensed under a Creative Commons Attribution 4.0 International License
Fraud Signature Detection using Deep Learning
Pranita Janpalliwar, Rohan Chandekar, Amit Khobragade, Muse Landge, Shruti Bucche, Prof. Ravindra Chilbule
Computer science and engineering
Rajiv Gandhi College of Engineering Research and Technology, Chandrapur, India
ABSTRACT :- Signature verification is one of the most widely used biometric authentication techniques in banking, financial services, and legal documentation. Due to the increasing number of financial fraud cases, traditional manual verification practices have become insufficient. Manual checking is slow, error-prone, and heavily dependent on human skill and experience. This paper presents an automated fraud signature detection system using Convolutional Neural Networks (CNNs). The proposed model extracts spatial features such as stroke width, curvature patterns, writing pressure variations, and structural details of signatures. Through training on genuine and forged samples, the system learns to classify signatures accurately. Experimental results demonstrate that CNNs can effectively improve authentication accuracy, reduce human error, and enhance security in practical applications.
Keywords :Signature Detection , Deep Learning, CNN, Fraud Detection
-
INTRODUCTION
Signatures remain one of the most accepted forms of verification across industries. Whether it is bank cheques, legal agreements, or identity validation processes, signatures play a crucial role in authentication.
However, signature
forgery has become increasingly common due to access to digital scanning tools and advanced editing techniques.
Manual verification, conducted by handwriting experts or employees, is often inconsistent. Human decision-making can be influenced by fatigue, personal judgment, or lack of expertise.
Deep learning, especially Convolutional Neural Networks (CNNs), has emerged as a powerful solution to this problem. CNNs are capable of extracting hierarchical features from images, learning subtle differences between genuine and forged signatures that may not be easily noticeable to humans. This research aims to develop a CNN-based model that can identify fraudulent signatures with high precision.
-
LITERATURE REVIEW
Traditional signature verification methods included handcrafted feature techniques such as:
-
SIFT (Scale-Invariant Feature Transform)
-
HOG (Histogram of Oriented Gradients)
-
Geometric shape-based analysis
-
Texture descriptors
While these approaches work for simple tasks, they fail when signature variations are high. Human handwriting differs in pressure, speed, and style, making pre-defined features insufficient.Recent research highlights the advantages of CNNs, which automatically learn relevant features directly from data. Several studies reported:
-
Improved accuracy with deep architectures
-
Better generalization to unseen signatures
-
Successful application of CNNs in other biometrics such as face and fingerprint recognition
This research builds upon previous work and focuses on designing a lightweight CNN architecture specifically for signature verification.
-
-
METHODOLOGY
-
Dataset
The dataset used in this research consists of multiple classes of signatures, each containing:
-
Genuine signatures written by the user
-
Forged signatures created by imitators The dataset was divided into:
-
80% training samples
-
20% testing samples
All images were standardized to maintain uniform size and clarity.
-
-
Preprocessing
To improve the quality of data and simplify model training, several preprocessing techniques were applied:
-
Grayscale conversion:
Removes unnecessary color information and reduces computation.
-
Resizing to 128×128:
Ensures consistency across samples.
-
Normalization:
Scales pixel values to enhance training stability.
-
Data augmentation:
Random rotation, zooming, shifting, and shearing were used to increase dataset diversity.
This prevents overfitting and improves robustness.
-
-
CNN Architecture
The CNN model used in this study contains the following layers:
-
Convolution Layer 1 32 filters, 3×3 kernel Extracts basic edges and simple stroke features
-
ReLU Activation
Introduces non-linearity Removes negative values
-
MaxPooling Layer (2×2) Reduces image dimensions
Helps in retaining important features
-
Convolution Layer 2 64 filters, 3×3 kernel Learns deeper stroke and curvature patterns
-
ReLU Activation + MaxPool
-
Convolution Layer 3 128 filters
Identifies complex signature features such as loops, intersections, and writing pressure
-
Flattening + Fully Connected Layer
Converts extracted features into a 1D vector Final classification performed here
-
Softmax Output Layer
Produces the probability of genuine vs forged signature D. Training Configuration
The model was trained using the following hyperparameters:
Loss Function: Cross-Entropy Loss Used because this is a classification task. Optimizer: Adam
Adaptive optimizer for faster
Fig. Architecture diagram
-
-
RESULTS
During training, the model showed:
Continuous decrease in training loss Improvement in validation accuracy
Ability to differentiate between visually similar signatures
The model outputs confidence scores for each prediction. These scores help identify signatures that are uncertain or borderline.
Forgeries that visually looked very similar caused occasional misclassifications. Poor image quality and incomplete signatures also affected performance.
Metric
Value
Testing Accuracy
98.21%
Testing Loss
0.0505
False Rejection Rate(FRR)
4.5%
False Acceptance Rate(FAR)
3.8%
.
Table 1 : Quantitative Performance of Metrics of Model
-
DISCUSSION
The CNN-based model proves to be an effective technique for signature verification.
Some key observations include:
CNNs automatically extract meaningful features without human intervention
The model is capable of detecting subtle writing differences
Performance depends on the diversity and quality of data Augmentation helps in reducing overfitting
This approach is highly beneficial for industries such as banking, finance, insurance, and document verification systems where accuracy and speed are critical.
The model demonstrates strong accuracy and reliability by learning writing patterns directly from images. It significanty reduces human workload and provides a scalable, automated solution for signature-based authentication.
-
FUTURE WORK
To enhance the system further:
Use advanced architectures such as ResNet, VGG16, or
MobileNet
Train with larger and more diverse datasets Develop real-time mobile or cloud-based
signature
verification systems
Incorporate segmentation techniques for complex signature documents
REFERENCES
-
S. Hafemann, R. Sabourin and L. S. Oliveira, Offline handwritten signature verification using deep convolutional neural networks, 2017 International Joint Conference on Neural Networks (IJCNN), Anchorage, AK, USA, 2017, pp. 18.
-
H. D. Khallaf and A. H. Alasadi, Handwritten signature forgery verification using convolutional neural networks, NeuroQuantology, vol. 20, no. 8, pp. 3500 3507, 2022.
-
M. Ferrer, M. Diaz and A. Morales, A behavioral handwriting model for static signature synthesis, IEEE Transactions on Pattern Analysis and Machine
Intelligence, vol. 40, no. 5, pp. 10481061, May 2018.
-
A. Kumar and Y. Zhou, Human identification using finger images, IEEE Transactions on Image Processing, vol. 21, no. 4,
pp. 22282244, Apr. 2012.
-
R. Plamondon and S. N. Srihari, On-line and off-line handwriting recognition: A comprehensive survey, IEEE Transactions on Pattern Analysis and Machine
Intelligence, vol. 22, no. 1, pp. 6384, Jan. 2000.
-
M. Al-Maadeed, N. Jaffel and A. Bouridane, Online handwritten signature verification using probabilistic neural networks, Pattern Recognition Letters, vol. 33, no. 3, pp. 320327, 2012.
-
A. Kholmatov and B. Yanikoglu, Identity authentication using improved online signature verification method, Pattern Recognition Letters, vol. 26, no. 15, pp. 24002408, 2005.
-
S. Impedovo and G. Pirlo, Automatic signature verification: The state of the art, IEEE Transactions on Systems, Man, and Cybernetics, Part C, vol. 38, no. 5, pp. 609635, Sept. 2008.
-
Y. Lecun, Y. Bengio and G. Hinton, Deep learning, Nature, vol.
521, no. 7553, pp. 436444, 2015.
-
D. P. Kingma and J. Ba, Adam: A method for stochastic optimization, International Conference on Learning Representations (ICLR), 2015.
