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Deep Dynamic Time Warping: End-to-End Local Representation Learning for Online Signature Verification

机译:深度动态时间规整:在线签名验证的端到端本地表示学习

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Siamese networks have been shown to be successful in learning deep representations for multivariate time series verification. However, most related studies optimize a global distance objective and suffer from a low discriminative power due to the loss of temporal information. To address this issue, we propose an end-to-end, neural network-based framework for learning local representations of time series, and demonstrate its effectiveness for online signature verification. This framework optimizes a Siamese network with a local embedding loss, and learns a feature space that preserves the temporal location-wise distances between time series. To achieve invariance to non-linear temporal distortion, we propose building a dynamic time warping block on top of the Siamese network, which will greatly improve the accuracy for local correspondences across intra-personal variability. Validation with respect to online signature verification demonstrates the advantage of our framework over existing techniques that use either handcrafted or learned feature representations.
机译:暹罗网络已被证明可以成功地学习用于多元时间序列验证的深度表示。但是,大多数相关研究优化了全局距离目标,并且由于时间信息的丢失而具有较低的判别力。为了解决这个问题,我们提出了一种基于端到端,基于神经网络的框架,用于学习时间序列的局部表示,并证明了其对在线签名验证的有效性。该框架优化了具有局部嵌入损失的暹罗网络,并学习了一个特征空间,该特征空间保留了时间序列之间的时间位置方向距离。为了实现非线性时间畸变的不变性,我们建议在暹罗网络的顶部构建一个动态时间扭曲块,这将大大提高跨人际变化的局部对应关系的准确性。关于在线签名验证的验证证明了我们的框架相对于使用手工或学习的特征表示的现有技术的优势。

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