An Improved U-Net Model for Offline handwriting signature denoising
This work addresses the challenge of improving signature recognition systems for forensic science and identity verification applications, though it appears incremental as it builds upon the existing U-Net architecture with specific enhancements.
The study tackled the problem of denoising offline handwriting signatures, which are often contaminated with interfering information, by proposing an improved U-Net model that incorporates discrete wavelet transform and PCA transform, resulting in significantly superior denoising effects compared to traditional methods, effectively enhancing image clarity and readability.
Handwriting signatures, as an important means of identity recognition, are widely used in multiple fields such as financial transactions, commercial contracts and personal affairs due to their legal effect and uniqueness. In forensic science appraisals, the analysis of offline handwriting signatures requires the appraiser to provide a certain number of signature samples, which are usually derived from various historical contracts or archival materials. However, the provided handwriting samples are often mixed with a large amount of interfering information, which brings severe challenges to handwriting identification work. This study proposes a signature handwriting denoising model based on the improved U-net structure, aiming to enhance the robustness of the signature recognition system. By introducing discrete wavelet transform and PCA transform, the model's ability to suppress noise has been enhanced. The experimental results show that this modelis significantly superior to the traditional methods in denoising effect, can effectively improve the clarity and readability of the signed images, and provide more reliable technical support for signature analysis and recognition.