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首页> 外文期刊>Pattern Analysis and Machine Intelligence, IEEE Transactions on >Latent Fingerprint Matching: Performance Gain via Feedback from Exemplar Prints
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Latent Fingerprint Matching: Performance Gain via Feedback from Exemplar Prints

机译:潜在的指纹匹配:通过示例指纹的反馈获得性能提升

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摘要

Latent fingerprints serve as an important source of forensic evidence in a court of law. Automatic matching of latent fingerprints to rolled/plain (exemplar) fingerprints with high accuracy is quite vital for such applications. However, latent impressions are typically of poor quality with complex background noise which makes feature extraction and matching of latents a significantly challenging problem. We propose incorporating top-down information or feedback from an exemplar to refine the features extracted from a latent for improving latent matching accuracy. The refined latent features (e.g. ridge orientation and frequency), after feedback, are used to re-match the latent to the top candidate exemplars returned by the baseline matcher and resort the candidate list. The contributions of this research include: (i) devising systemic ways to use information in exemplars for latent feature refinement, (ii) developing a feedback paradigm which can be wrapped around any latent matcher for improving its matching performance, and (iii) determining when feedback is actually necessary to improve latent matching accuracy. Experimental results show that integrating the proposed feedback paradigm with a state-of-the-art latent matcher improves its identification accuracy by 0.5-3.5 percent for NIST SD27 and WVU latent databases against a background database of 100k exemplars.
机译:潜在指纹是法庭上法医证据的重要来源。潜在指纹与滚动/普通(示例性)指纹的高精度自动匹配对于此类应用至关重要。然而,潜在印象通常具有较差的质量,带有复杂的背景噪声,这使得潜在特征的提取和匹配成为一个极具挑战性的问题。我们建议合并自上而下的信息或来自示例的反馈,以完善从潜在对象中提取的特征,以提高潜在对象匹配的准确性。反馈后,经过改进的潜在特征(例如山脊方向和频率)用于将潜在特征与基线匹配器返回的顶级候选示例重新匹配,并求助候选列表。这项研究的贡献包括:(i)设计系统的方法来利用示例中的信息来进行潜在特征的细化;(ii)开发可围绕任何潜在匹配器进行包装以改善其匹配性能的反馈范式;以及(iii)确定何时反馈实际上是提高潜在匹配精度所必需的。实验结果表明,相对于10万个示例数据库,NIST SD27和WVU潜在数据库将建议的反馈范例与最新的潜在匹配器进行集成可将其识别准确率提高0.5-3.5%。

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