stirtrace基准测试在潜在指纹年龄估计鲁棒性评价中的应用

R. Merkel, M. Hildebrandt, J. Dittmann
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引用次数: 5

摘要

长期研究的潜在打印年龄估计的挑战最近重新访问使用非侵入性捕获设备和时间序列。虽然这种方法首次能够提供客观的性能度量,但该方案对不同上下文条件的鲁棒性却鲜为人知。此外,StirTrace最近已从著名的StirMark框架改编为潜在指纹的基准测试。本文将StirTrace的图像处理技术转移到年龄估计挑战中,并对不同上下文条件下500个短期老化时间序列的估计性能进行了基准测试。结果表明,时间序列预处理对像素深度降低和不同类型的噪声都很敏感。此外,减小图像尺寸比减小分辨率对年龄估计性能的影响更大。在基材模拟中添加纹理,在污迹打印模拟中添加中值切割滤波,在老化背景下表示这类失真的效果并不理想。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of stirtrace benchmarking for the evaluation of latent fingerprint age estimation robustness
The long-researched challenge of latent print age estimation has recently been re-visited using non-invasive capturing devices and time series. While this approach was able to provide an objective performance measure for the first time, the robustness of the scheme towards different contextual conditions is barely known. Also, StirTrace has recently been adapted from the well-known StirMark framework to the benchmarking of latent fingerprints. In this paper, the image manipulation techniques of StirTrace are transferred to the age estimation challenge and estimation performance is benchmarked for 500 short-term aging time series under varying contextual conditions. Results show that time series preprocessing is sensitive to pixel-depth reduction as well as different types of noise. Furthermore, a decreased image size has a stronger impact on the age estimation performance than a decreased resolution. The addition of texture for substrate simulation and median cut filtering for smudged print simulation are found to not be optimal in the aging context for representing this kind of distortions.
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