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Improve recognition performance by hybridizing principal component analysis (PCA) and elastic bunch graph matching (EBGM)

机译:通过混合主成分分析(PCA)和弹性束图匹配(EBGM)来提高识别性能

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In this paper, a new type of hybrid method that hybridizes PCA and EBGM as a two-stage procedure is presented to improve recognition performance in large-scale face recognition. Among various methods in face recognition, PCA is considered to identify human faces by holistic views, while EBGM is supposed to distinguish one face from another by details, but they are both excellent representative methods due to their respective advantages. However, when the size of gallery gets large, the recognition performance of both PCA and EBGM degrades severely. To improve recognition performance with large-scale gallery, we propose a hybrid method, which preprocesses the gallery images with PCA at first stage, and produces the final result with EBGM based on the preliminary result generated by PCA. Since the hybrid method combines the advantages of PCA and EBGM, the recognition performance with large-scale gallery has been improved greatly. Experimental result shows that the hybrid method has a remarkably better recognition accuracy than either PCA or EBGM. Moreover, it seems that the larger the gallery size, the better the improvement. On the other hand, the hybrid method brings no additional computational cost, even less than EBGM.
机译:本文提出了一种将PCA和EBGM分为两个阶段的新型混合方法,以提高大规模人脸识别的识别性能。在人脸识别的各种方法中,PCA被认为是通过整体观点来识别人脸的,而EBGM被认为可以通过细节来区分人脸,但是由于它们各自的优势,它们都是极好的代表方法。但是,当画廊的大小变大时,PCA和EBGM的识别性能都会严重下降。为了提高大型画廊的识别性能,我们提出了一种混合方法,该方法在第一阶段用PCA预处理画廊图像,然后基于PCA生成的初步结果用EBGM生成最终结果。由于混合方法结合了PCA和EBGM的优点,因此对大型画廊的识别性能有了很大的提高。实验结果表明,与PCA或EBGM相比,该混合方法具有更高的识别精度。而且,画廊的面积似乎越大,改善的程度就越好。另一方面,混合方法不会带来额外的计算成本,甚至比EBGM还少。

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