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An efficient low cost approach for on-line signature recognition based on length normalization and fractional distances

机译:一种基于长度归一化和分数距离的有效低成本在线签名识别方法

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This work presents a new proposal for all efficient on-line signature recognition system with very low Computational load and storage requirements, suitable to be used in resource-limited systems like smartcards. The novelty of the proposal is in both the feature extraction and classification stages, since it is based on the use of size normalized signatures, which allows for similarity estimation, usually based on dynamic time warping (DTW) or hidden Markov models (HMMs), to be performed by an easy distance calculation between vectors, which is computed using fractional distance, instead of the more typical Euclidean one, so as to overcome the concentration phenomenon that appears when data are high dimensional. Verification and identification tasks have been carried Out using the MCYT database, achieving an EER (common threshold) of 6.6% and 1.8% with skilled and random forgeries, respectively, in the first task and 3.6% of error in the second. The proposed System outperforms DTW-based and HMM-based ones, even though these have proved to be very efficient in on-line signature recognition, with storage requirements between 9 and 90 times lesser and a processing speed between 181 and 713 times greater than the DTW-based systems. (C 2008 Elsevier Ltd. All rights reserved.
机译:这项工作为计算效率和存储需求非常低的所有高效的在线签名识别系统提出了新的建议,适用于诸如智能卡之类的资源受限的系统。该提案的新颖之处在于特征提取和分类阶段,因为它基于尺寸归一化签名的使用,通常允许基于动态时间规整(DTW)或隐马尔可夫模型(HMM)进行相似性估算,可以通过使用分数距离而不是更典型的欧几里得距离进行向量之间的简单距离计算来执行此操作,从而克服了数据为高维时出现的集中现象。已使用MCYT数据库执行了验证和识别任务,在第一项任务中,熟练和随机伪造的EER(通用阈值)分别达到6.6%和1.8%,第二项则为3.6%。提议的系统优于基于DTW和基于HMM的系统,即使事实证明这些系统在在线签名识别方面非常有效,其存储需求比传统DTW和HMM低9到90倍,处理速度比181到713倍高。基于DTW的系统。 (C 2008 ElsevierLtd。保留所有权利。

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