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A Novel Locally Linear KNN Method With Applications to Visual Recognition

机译:一种新颖的局部线性KNN方法及其在视觉识别中的应用

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摘要

A locally linear K Nearest Neighbor (LLK) method is presented in this paper with applications to robust visual recognition. Specifically, the concept of an ideal representation is first presented, which improves upon the traditional sparse representation in many ways. The objective function based on a host of criteria for sparsity, locality, and reconstruction is then optimized to derive a novel representation, which is an approximation to the ideal representation. The novel representation is further processed by two classifiers, namely, an LLK-based classifier and a locally linear nearest mean-based classifier, for visual recognition. The proposed classifiers are shown to connect to the Bayes decision rule for minimum error. Additional new theoretical analysis is presented, such as the nonnegative constraint, the group regularization, and the computational efficiency of the proposed LLK method. New methods such as a shifted power transformation for improving reliability, a coefficients’ truncating method for enhancing generalization, and an improved marginal Fisher analysis method for feature extraction are proposed to further improve visual recognition performance. Extensive experiments are implemented to evaluate the proposed LLK method for robust visual recognition. In particular, eight representative data sets are applied for assessing the performance of the LLK method for various visual recognition applications, such as action recognition, scene recognition, object recognition, and face recognition.
机译:本文提出了一种局部线性K最近邻(LLK)方法,并将其应用于鲁棒的视觉识别。具体来说,首先介绍理想表示的概念,它在许多方面改进了传统的稀疏表示。然后优化基于稀疏性,局部性和重构的一系列标准的目标函数,以得出新颖的表示形式,它是理想表示形式的近似值。新颖的表示由两个分类器进一步处理,即基于LLK的分类器和基于局部线性最近均值的分类器,以进行视觉识别。所示拟议的分类器连接到贝叶斯决策规则,以实现最小误差。提出了其他新的理论分析,例如非负约束,组正则化以及所提出的LLK方法的计算效率。为了进一步提高视觉识别性能,提出了新的方法,例如用于提高可靠性的移位功率变换,用于增强泛化的系数截断方法以及用于特征提取的改进的边际Fisher分析方法。进行了广泛的实验,以评估所提出的LLK方法对鲁棒的视觉识别。特别地,将八个代表性数据集应用于评估LLK方法在各种视觉识别应用程序(例如动作识别,场景识别,对象识别和面部识别)中的性能。

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