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Combining pixel selection with covariance similarity approach in hyperspectral face recognition based on convolution neural network

机译:基于卷积神经网络的高光谱面识别在高光谱面识别中结合像素选择

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A Hyperspectral camera provides discriminating features for capturing human faces that cannot be obtained by any other imaging technique. Nevertheless, it has new issues comprising curse of dimensionality, physical parameter retrieval, fast computing and inter band misalignment. As a result of, the literature of Hyperspectral Face Recognition is more scanty and confined to improvised dimensionality reduction and minimization of wide-ranging bands, and thus the objective can be obtained by the use of the Convolution Neural Network (ConvNet). Since ConvNet is of great attention in recent times, it can offer outstanding performance in face recognition systems, where the quantity of training data is amply large. We propose a Hyperspectral Face Recognition system using Firefly algorithm for band fusion and the Convolution Neural Network for classification. In addition to this, the present work is extended 11 exiting face recognition methods to perform Hyperspectral Face Recognition task. Thus the work has been framed as Hyperspectral Face Recognition problem to an image-set classification problem and assessment of the performance has been done on six state-of-the-art image-set problem techniques, and similarly it was examined on five state-of-the-art RGB and gray scale face recognition system, subsequently applied improved Firefly band selection algorithm on Hyperspectral Images to get appropriate band. Assessment with the eleven extended and five existing HSI Face Recognition system on two benchmark datasets (CMU-HSFD & UWA-HSFD) demonstrates that the proposed system overtakes all by a noteworthy margin. Lastly, we execute the band selection demonstration to get the novelty for most informative bands in Visible Near Infrared (VNIR). (C) 2020 Elsevier B.V. All rights reserved.
机译:高光谱相机提供用于捕获不能通过任何其他成像技术获得的人面的鉴别特征。然而,它具有新的问题,包括规范,物理参数检索,快速计算和跨域未对准的诅咒。结果,高光谱面识别的文献更为稀少,并且仅限于即原的宽范围带的维度降低和最小化,因此可以通过使用卷积神经网络(ConvNet)来获得目标。由于Trondnet最近的重视,它可以在面部识别系统中提供出色的性能,培训数据的数量很大。我们提出了一种利用萤火虫算法的高光谱面识别系统,用于频带融合和卷积神经网络进行分类。除此之外,本工作延长了11个引出的面部识别方法以执行高光谱面识别任务。因此,该工作已经被框架被诬陷为图像集分类问题,并且对六种最先进的图像集问题技术进行了评估,并且类似地研究了五个状态 - 最新的RGB和灰度面部识别系统,随后在高光谱图像上应用了改进的萤火虫频带选择算法以获得适当的频带。在两个基准数据集(CMU-HSFD和UWA-HSFD)上与十一扩展和五个现有的HSI面部识别系统进行评估表明,所提出的系统通过值得注意的保证金超越所有。最后,我们执行乐队选择演示,以获得最近似红外线(VNIR)中的大多数信息乐队的新颖性。 (c)2020 Elsevier B.v.保留所有权利。

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