LSTM Recurrent Neural Networks for Signature Verification - Paperback

LSTM Recurrent Neural Networks for Signature Verification - Paperback

$76.21


by Conrad Tiflin (Author)

The author investigated the application of Long Short-Term Memory (LSTM) Recurrent Neural Networks (RNNs) to the task of signature verification. Traditional RNNs are capable of modeling dynamical systems with hidden states; they have been successfully applied to domains ranging from financial forecasting to control and speech recognition. This manuscript is the result of successfully applying on-line signature time series data to traditional LSTM, LSTM with forget gates and LSTM with peephole connections algorithms originally developed by S. Hochreiter and J. Schmidhuber. It can be clearly seen in this pattern classification problem that traditional LSTM RNNs outperform LSTMs with forget gates and peephole connections. The latter also outperform traditional RNNs which cannot seem to even learn this task due to the long-term dependency problem.

Number of Pages: 104
Dimensions: 0.25 x 9 x 6 IN
Publication Date: February 06, 2012
Shop Pay Continue Shopping

Estimated delivery: June 21 - June 24, 2026

Secure Checkout

Free Returns

Proudly USA Based

Accepted Payment Methods

American Express
Apple Pay
Diners Club
Discover
Google Pay
Mastercard
PayPal
Shop Pay
Visa