Recognizing multiple observations using adaptive graph based label propagation

F. Dornaika, Radouan Dhabi, Y. Ruichek, A. Bosaghzadeh
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Abstract

Recently, we introduced a robust and adaptive method for constructing sparse graphs. This method was termed Two Phase Weighted Regularized Least Square (TPWRLS) [6]. In this framework, the graph structure and its affinity matrix are simultaneously computed through a two phase sample coding. The second phase of coding utilizes adaptive sample pruning and re-weighting. In the context of graph-based semi-supervised label propagation, the obtained graph can achieve or outperform state-of-the art graph construction methods. In this paper, we present a performance study of the proposed method by considering two main aspects that were not addressed before. First, the new graph is exploited in order to tackle the problem of recognizing multiple images corresponding to the same category-a non straightforward scenario for supervised recognition techniques. Second, a performance evaluation on different image descriptor types is carried out. Experiments are conducted on three public image datasets: two face datasets and one handwritten digit dataset. These experiments show that in addition to its superiority over competing graph construction methods, the proposed method can easily solve the label inference of multiple observations and can work with several types of image descriptors and scenes.
使用基于自适应图的标签传播来识别多个观测值
最近,我们提出了一种鲁棒自适应的稀疏图构造方法。该方法被称为两阶段加权正则化最小二乘法(TPWRLS)[6]。在该框架中,通过两相采样编码同时计算图结构及其关联矩阵。编码的第二阶段利用自适应样本修剪和重加权。在基于图的半监督标签传播环境中,得到的图可以达到或优于目前最先进的图构造方法。在本文中,我们通过考虑之前未解决的两个主要方面,提出了所提出方法的性能研究。首先,利用新图来解决识别对应于同一类别的多个图像的问题——这是监督识别技术的一个不直接的场景。其次,对不同图像描述子类型进行了性能评估。实验在三个公共图像数据集上进行:两个人脸数据集和一个手写数字数据集。这些实验表明,该方法除了优于竞争图构造方法外,还可以很容易地解决多个观测值的标签推理问题,并且可以处理多种类型的图像描述符和场景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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