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Face Recognition in Real-Time Applications: A Comparison of Directed Enumeration Method and K-d Trees

机译:实时应用中的人脸识别:定向枚举方法与K-d树的比较

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The problem of face recognition with large database in real-time applications is discovered. The enhancement of HoG (Histogram of Gradients) algorithm with features mutual alignment is proposed to achieve better accuracy. The novel modification of directed enumeration method (DEM) using the ideas of the Best Bin First (BBF) search algorithm is introduced as an alternative to the nearest neighbor rule to prevent the brute force. We present the results of an experimental study in a problem of face recognition with FERET and Essex datasets. We compare the performance of our DEM modification with conventional BBF k-d trees in their well-known efficient implementation from OpenCV library. It is shown that the proposed method is characterized by increased computing efficiency (2-12 times in comparison with BBF) even in the most difficult cases where many neighbors are located at very similar distances. It is demonstrated that BBF cannot be used with our recognition algorithm as the latter is based on non-symmetric measure of similarity. However, we experimentally prove that our recognition algorithm improves recognition accuracy in comparison with classical HoG implementation. Finally, we show that this algorithm could be implemented efficiently if it is combined with the DEM.
机译:发现了实时应用中大型数据库的人脸识别问题。提出了具有特征相互对齐的HoG(梯度直方图)算法的增强,以实现更好的精度。介绍了使用最佳Bin First(BBF)搜索算法的思想对有向枚举方法(DEM)进行的新颖修改,以替代最近邻规则以防止暴力破解。我们介绍了FERET和Essex数据集对人脸识别问题的实验研究结果。我们将OpenCV库中众所周知的有效实现方式与传统BBF k-d树的DEM修改性能进行比较。结果表明,即使在最困难的情况下,许多邻居位于非常相似的距离处,所提出的方法也具有提高的计算效率(与BBF相比为2-12倍)的特征。证明了BBF不能与我们的识别算法一起使用,因为后者基于相似性的非对称度量。但是,我们通过实验证明了与经典HoG实现相比,我们的识别算法提高了识别精度。最后,我们证明了该算法与DEM结合可以有效实施。

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