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Block-based Deep Belief Networks for face recognition

机译:基于区块的深度信念网络,用于人脸识别

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This paper presents research findings on the use of Deep Belief Networks (DBNs) for face recognition. Experiments were conducted to compare the performance of a DBN trained using whole images with that of several DBN trained using image blocks. Image blocks are obtained when the face images are divided into smaller blocks. The objective of using image blocks is to improve the performance of the present DBN to visual variations. To test this hypothesis, the proposed block-based DBN was tested on different databases, which contain a variety of visual variations. Simulation results on these databases show that the proposed block-based DBN is effective against lighting variation. The proposed approach is also compared with other illumination invariant methods and was found to demonstrate higher recognition accuracies.
机译:本文介绍了有关使用深层信任网络(DBN)进行面部识别的研究成果。进行实验以比较使用整个图像训练的DBN和使用图像块训练的几个DBN的性能。当面部图像被分成较小的块时,获得图像块。使用图像块的目的是为了改善本DBN在视觉变化方面的性能。为了检验这个假设,在不同的数据库中对提出的基于块的DBN进行了测试,这些数据库包含各种视觉变化。在这些数据库上的仿真结果表明,所提出的基于块的DBN可以有效防止光照变化。所提出的方法也与其他照明不变方法进行了比较,发现具有更高的识别精度。

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