Encoding the Models with Object-Aware Feature Basis: A New Analytical Tool for Graphic Applications

Nannan Li, Haohao Li, Jiangbei Hu, Shengfa Wang, Zhixun Su, Zhongxuan Luo
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Abstract

Feature space analysis is always the most central problem in all kinds of graphic applications, and the acquirement of different kinds of basis for feature space has never been stopped. In this paper, we propose a novel way to analyze the feature space by factorizing it into visually reasonable and physically meaningful basis and corresponding encoders (coefficients). Non-negative matrix factorization (NMF) has previously been shown to be powerful in information retrieval, computer vision and pattern recognition for its physically soundable and additive fashion. By transferring the factorization idea onto tasks of graphic applications, in this paper, we propose a framework for generating new feature basis and encoders for further analysis, which helps empower the downstream graphic applications, including analysis on one single model and joint analysis on a couple of models. Instead of factorizing the matrix composed of images or graphic elements/objects, we propose to apply sparseand-constrained NMF (SAC-NMF) to the feature space that is more general and extendable. And by designing various feature descriptors, we get the base functions for the feature space to enable the analysis of one single model and co-analysis of a list of models. Through the extensive experiments, our analytical framework has exhibited many attractive advantages such as being object-aware, robust, discriminative, extendable, etc.
基于对象感知特征的模型编码:一种新的图形应用分析工具
在各种图形应用中,特征空间分析一直是最核心的问题,各种特征空间基的获取从未停止过。本文提出了一种新的特征空间分析方法,即将特征空间分解为视觉上合理、物理上有意义的基和相应的编码器(系数)。非负矩阵分解(NMF)由于其物理可听性和可加性,在信息检索、计算机视觉和模式识别等方面具有强大的应用前景。通过将分解思想转移到图形应用的任务中,我们提出了一个框架来生成新的特征基和编码器以进行进一步的分析,这有助于增强下游图形应用的能力,包括对单个模型的分析和对几个模型的联合分析。我们建议将稀疏约束NMF (SAC-NMF)应用于更通用和可扩展的特征空间,而不是分解由图像或图形元素/对象组成的矩阵。通过设计各种特征描述符,得到特征空间的基函数,实现对单个模型的分析和对一组模型的协同分析。通过大量的实验,我们的分析框架显示出许多有吸引力的优点,如对象感知、鲁棒性、判别性、可扩展性等。
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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