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首页> 外文期刊>Signal Processing. Image Communication: A Publication of the the European Association for Signal Processing >Generalized compressed sensing with QR-based vision matrix learning for face recognition under natural scenes
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Generalized compressed sensing with QR-based vision matrix learning for face recognition under natural scenes

机译:基于QR的视觉矩阵学习在自然场景下对面部识别的广义压缩感

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摘要

Face recognition under natural scenes is a significant challenge in pattern recognition research. With the success of sparse representation-based classification in related fields, face recognition based on compressed sensing (CS) theory has received increasing attention. These CS-based approaches produce excellent results when dealing with face data from experimental environments, but are inadequate when dealing with images from natural scenes. For solving this problem, a novel Generalized Compressed Sensing (GCS) framework is proposed in this paper. The main innovations of this paper are three-fold. First, with reference to the commutative property of the inner product, GCS recovery treats the original CS matrix, not the original signal, as the processing object. Second, in order to ensure the reliability and feasibility of GCS recovery, a QR-based vision matrix learning method is presented to realize face information embedding for the original CS matrix. Third, to balance the restricted isometry property (RIP) of the original CS matrix for CS sampling and its sparsity for GCS recovery, a low density parity check code is introduced to generate the original CS matrix. With this full CS framework including CS sampling and GCS recovery, the final generalized l(1)-norm optimal solution can be used as the criterion for face recognition. Experimental results show that, compared with conventional approaches to CS recognition, the proposed method achieves a significant performance for face recognition tasks under natural scenes.
机译:在自然场景下的人脸识别是模式识别研究中的重大挑战。随着基于稀疏表示的基于稀疏代表的分类,基于压缩感的面部识别(CS)理论得到了增加的关注。这些基于CS的方法在处理实验环境中的面部数据时产生出色的结果,但在处理自然场景的图像时是不充分的。为了解决这个问题,本文提出了一种新颖的广义压缩感测(GCS)框架。本文的主要创新是三倍。首先,参考内部产品的换向性质,GCS恢复处理原始的CS矩阵,而不是原始信号,作为处理对象。其次,为了确保GCS恢复的可靠性和可行性,提出了一种基于QR的视觉矩阵学习方法以实现原始CS矩阵的面部信息嵌入。第三,要平衡原始CS矩阵的受限制的等距属性(RIP)对于CS采样及其稀疏恢复的稀疏性,引入了低密度奇偶校验码以生成原始的CS矩阵。通过此全CS框架,包括CS采样和GCS恢复,最终通用L(1)-NORM最佳解决方案可用作面部识别的标准。实验结果表明,与CS识别的传统方法相比,该方法在自然场景下实现了面部识别任务的重要性。

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