论文标题

图像设置分类的判别残差分析,并具有年龄变化

Discriminative Residual Analysis for Image Set Classification with Posture and Age Variations

论文作者

Ren, Chuan-Xian, Luo, You-Wei, Xu, Xiao-Lin, Dai, Dao-Qing, Yan, Hong

论文摘要

图像集识别已被广泛应用于许多实际问题,例如实时视频检索和图像字幕任务。由于其出色的表现,近年来它已成为一个重要的话题。然而,具有复杂变化的图像,例如姿势和人类年龄,很难解决,因为这些变化在图像外观方面是连续且逐渐的。因此,图像集识别的关键点是从图像批处理中挖掘出具有变化的固有连接或结构信息。在这项工作中,提出了一种判别残差分析(DRA)方法,以通过发现相关组和无关组中的判别特征来改善分类性能。具体而言,DRA试图获得一个强大的投影,将剩余表示形式投入到判别子空间中。这种投影子空间有望尽可能放大输入空间的有用信息,然后在判别子空间中,训练集与给定度量或距离所描述的测试集之间的关系将更加精确。我们还通过定义构建无关群体的另一种方法来提出一种非冒险策略,这有助于减少抽样错误的成本。两种正则化方法用于处理可能的小样本量问题。广泛的实验是在基准数据库上进行的,结果显示了新方法的优越性和效率。

Image set recognition has been widely applied in many practical problems like real-time video retrieval and image caption tasks. Due to its superior performance, it has grown into a significant topic in recent years. However, images with complicated variations, e.g., postures and human ages, are difficult to address, as these variations are continuous and gradual with respect to image appearance. Consequently, the crucial point of image set recognition is to mine the intrinsic connection or structural information from the image batches with variations. In this work, a Discriminant Residual Analysis (DRA) method is proposed to improve the classification performance by discovering discriminant features in related and unrelated groups. Specifically, DRA attempts to obtain a powerful projection which casts the residual representations into a discriminant subspace. Such a projection subspace is expected to magnify the useful information of the input space as much as possible, then the relation between the training set and the test set described by the given metric or distance will be more precise in the discriminant subspace. We also propose a nonfeasance strategy by defining another approach to construct the unrelated groups, which help to reduce furthermore the cost of sampling errors. Two regularization approaches are used to deal with the probable small sample size problem. Extensive experiments are conducted on benchmark databases, and the results show superiority and efficiency of the new methods.

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