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Robust multimodal multivariate ear recognition using kernel based simultaneous sparse representation

机译:使用基于内核的同时稀疏表示进行鲁棒的多峰多变量耳朵识别

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摘要

In this paper, we propose a novel multivariate multimodal ear recognition method which exploits correlation between left and right ear modality of an individual for his/her identification using joint sparse representation and its variant, joint dynamic sparse representation based classification approach. To make the problem much more robust against outliers that might be resulted from illumination variation or noises due to inaccurate measurements or from partial occlusion due to hair or ornaments — especially for female subjects, we employ a novel weighted multivariate regression scheme under joint sparse as well as joint dynamic sparse penalization. That particular scheme learns a set of weights iteratively for each and every residual corresponding to each observation and subsequently, during the time of classification, gives lesser weight to elements detected as outliers such that they are not able to participate for query set representation. To further improve accuracy of the system, the proposed method is kernelized to tackle non-linearity infusion made by pose variations and occlusions. In the end, extensive experimentations are carried out over a novel database developed in our laboratory to compare performance of the proposed method to several competitive, state-of-the-art methods in order to check suitability of the proposed classification method for various real life applications.
机译:在本文中,我们提出了一种新颖的多变量多模式耳朵识别方法,该方法利用联合稀疏表示及其基于变体,联合动态稀疏表示的分类方法,利用个人左右耳模态之间的相关性进行识别。为了使问题更加健壮,尤其是对于女性对象,我们还采用了一种新颖的加权多元回归方案,在因稀疏而导致的照度变化或噪声或由于毛发或装饰品引起的部分遮挡而导致的异常值上,特别是对于女性受试者作为联合动态稀疏惩罚。该特定方案针对与每个观察值相对应的每个残差迭代地学习一组权重,并且随后在分类时,将较小的权重赋予检测为异常值的元素,以使它们无法参与查询集表示。为了进一步提高系统的准确性,将提出的方法进行核化以解决由姿势变化和遮挡引起的非线性注入。最后,我们在实验室中开发的新型数据库上进行了广泛的实验,以比较该方法与几种竞争性的最新方法的性能,以检查该方法在各种现实生活中的适用性。应用程序。

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