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A new discriminative sparse parameter classifier with iterative removal for face recognition
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作者 TANG De-yan ZHOU Si-wang +2 位作者 LUO Meng-ru CHEN Hao-wen TANG Hui 《Journal of Central South University》 SCIE EI CAS CSCD 2022年第4期1226-1238,共13页
Face recognition has been widely used and developed rapidly in recent years.The methods based on sparse representation have made great breakthroughs,and collaborative representation-based classification(CRC)is the typ... Face recognition has been widely used and developed rapidly in recent years.The methods based on sparse representation have made great breakthroughs,and collaborative representation-based classification(CRC)is the typical representative.However,CRC cannot distinguish similar samples well,leading to a wrong classification easily.As an improved method based on CRC,the two-phase test sample sparse representation(TPTSSR)removes the samples that make little contribution to the representation of the testing sample.Nevertheless,only one removal is not sufficient,since some useless samples may still be retained,along with some useful samples maybe being removed randomly.In this work,a novel classifier,called discriminative sparse parameter(DSP)classifier with iterative removal,is proposed for face recognition.The proposed DSP classifier utilizes sparse parameter to measure the representation ability of training samples straight-forward.Moreover,to avoid some useful samples being removed randomly with only one removal,DSP classifier removes most uncorrelated samples gradually with iterations.Extensive experiments on different typical poses,expressions and noisy face datasets are conducted to assess the performance of the proposed DSP classifier.The experimental results demonstrate that DSP classifier achieves a better recognition rate than the well-known SRC,CRC,RRC,RCR,SRMVS,RFSR and TPTSSR classifiers for face recognition in various situations. 展开更多
关键词 collaborative representation-based classification discriminative sparse parameter classifier face recognition iterative removal sparse representation two-phase test sample sparse representation
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基于动态字典学习的含噪高光谱图像空谱融合
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作者 杨静 赵建斌 +3 位作者 陈路 池浩田 闫涛 陈斌 《计算机应用》 2025年第9期2941-2948,共8页
针对传统高光谱图像(HSI)空谱融合算法通常采用静态光谱字典,而字典学习与图像融合过程相分离,对含有噪声的空谱融合任务处理效果不佳的问题,提出一种基于动态字典学习(DDL)的含噪HSI空谱融合算法。该算法采用迭代思想,在融合过程中动... 针对传统高光谱图像(HSI)空谱融合算法通常采用静态光谱字典,而字典学习与图像融合过程相分离,对含有噪声的空谱融合任务处理效果不佳的问题,提出一种基于动态字典学习(DDL)的含噪HSI空谱融合算法。该算法采用迭代思想,在融合过程中动态更新字典原子,从而协作完成空谱融合及噪声去除任务。首先,对输入的HSI进行粗去噪,并利用去噪结果初始化光谱字典;其次,利用上述初始化字典对两幅待融合图像进行稀疏表示,以得到中间融合结果;再次,将中间融合结果反馈给字典学习模块,不断更新字典原子,构造动态光谱字典;最后,通过迭代以上过程得到最终的输出图像。在3个遥感HSI数据集上的仿真实验结果表明,所提算法能够在提升图像空间分辨率的同时有效去除噪声。同时,在真实含噪图像波段上的实验结果表明,所提算法能够有效提高融合图像的视觉质量。在Cuprite Mine数据集上,在高斯噪声方差为0.15且放大倍数为8时,与基于广义张量核范数(GTNN)的方法和先去噪后融合的方法AL-NSSR方法相比,所提算法的峰值信噪比(PSNR)分别提升了32.48%和10.72%。 展开更多
关键词 高光谱图像 空谱融合 噪声 光谱字典学习 迭代稀疏表示
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