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Towards a robust face recognition system using compressive sensing

机译:迈向使用压缩感测的强大人脸识别系统

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An application of compressive sensing (CS) theory in image-based robust face recognition is considered. Most contemporary face recognition systems suffer from limited abilities to handle image nuisances such as illumination, facial disguise, and pose misalignment. Motivated by CS, the problem has been recently cast in a sparse representation framework: The sparsest linear combination of a query image is sought using all prior training images as an overcomplete dictionary, and the dominant sparse coefficients reveal the identity of the query image. The ability to perform dense error correction directly in the image space also provides an intriguing solution to compensate pixel corruption and improve the recognition accuracy exceeding most existing solutions. Furthermore, a local iterative process can be applied to solve for an image transformation applied to the face region when the query image is misaligned. Finally, we discuss the state of the art in fast l1 -minimization to improve the speed of the robust face recognition system. The paper also provides useful guidelines to practitioners working in similar fields, such as acoustic/speech recognition.
机译:考虑了压缩感知(CS)理论在基于图像的鲁棒人脸识别中的应用。大多数当代人脸识别系统的处理图像干扰(例如照明,面部伪装和姿势未对准)的能力有限。受CS的启发,最近在一个稀疏表示框架中提出了该问题:使用所有先前的训练图像作为一个不完整的字典来查找查询图像的最稀疏的线性组合,并且主要的稀疏系数揭示了查询图像的身份。直接在图像空间中执行密集错误校正的能力还提供了一种引人入胜的解决方案,以补偿像素损坏并提高识别精度,超过了大多数现有解决方案。此外,当查询图像未对准时,可以应用局部迭代过程来解决应用于面部区域的图像变换。最后,我们讨论了快速最小化l1的技术现状,以提高鲁棒性人脸识别系统的速度。本文还为从事类似领域(例如声学/语音识别)的从业人员提供了有用的指导。

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