This paper discusses various approaches to handwritten signature verification using artificial neural networks, focusing on feature extraction and classification methods. It highlights the importance of both online and offline techniques, as well as the challenges associated with detecting various types of forgery. The proposed system employs a multilayer perceptron with backpropagation for training, aiming to improve the accuracy of identifying genuine versus forged signatures.