TL;DR
This paper introduces a meta-learning approach for offline handwritten signature verification, enabling rapid adaptation to new users with minimal genuine signatures and improved discrimination against skilled forgeries.
Contribution
It proposes a novel meta-learning framework that guides classifier adaptation for each user using only genuine signatures, enhancing verification performance with few samples.
Findings
Outperforms writer-independent systems in experiments.
Achieves comparable results to state-of-the-art writer-dependent systems with few samples.
Effective in discriminating skilled forgeries even without training on them.
Abstract
Offline Handwritten Signature verification presents a challenging Pattern Recognition problem, where only knowledge of the positive class is available for training. While classifiers have access to a few genuine signatures for training, during generalization they also need to discriminate forgeries. This is particularly challenging for skilled forgeries, where a forger practices imitating the user's signature, and often is able to create forgeries visually close to the original signatures. Most work in the literature address this issue by training for a surrogate objective: discriminating genuine signatures of a user and random forgeries (signatures from other users). In this work, we propose a solution for this problem based on meta-learning, where there are two levels of learning: a task-level (where a task is to learn a classifier for a given user) and a meta-level (learning across…
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