Triple Modal Signature (TMS) Dataset |
Features 70 writers, each providing 10 genuine signatures; 20 writers also contributed 10 forged signatures. |
2024 |
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Zhaosen Shi |
Offline Handwriting Signature Dataset |
Contains 12,600 offline signature images from 420 individuals, with 30 signatures per participant. |
2023 |
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University of Raparin and Firat University |
ChiSig |
A Chinese document signature forgery detection benchmark containing 10,242 images across 500 distinct signed names. |
2023 |
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Zhejiang University |
MSDS Dataset |
It has two subsets, and each subset includes 16,080 samples from 402 users, with 20 genuine and 20 skilled forgery samples per user. |
2022 |
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HCIILAB |
BHSig260 |
Comprising 260 signers, the dataset includes 14,040 signature images. |
2014 |
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German Research Center for AI |
ICDAR 2013 |
The ICDAR 2013 dataset, published by the International Conference on Document Analysis and Recognition (ICDAR) in 2013. |
2013 |
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ICDAR |
ICDAR 2011 |
It is an authoritative benchmark dataset released by the International Conference on Document Analysis and Recognition (ICDAR). |
2011 |
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ICDAR |
SVC2004 |
This dataset consists of 4,000 signature samples from 100 authors. |
2004 |
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HKUST |
MCYT-SignatureOff-75 |
The dataset consists of handwritten samples from 75 signers, totaling 2250 signature images. |
2004 |
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Autonomous University of Madrid |
MCYT-Signature-100 |
The database comprises handwritten signature data from 100 users, totaling 5,000 samples. |
2003 |
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Autonomous University of Madrid |