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Barycentric coordinates based soft assignment for object classification

机译:基于体重坐标的对象分类的软分配

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摘要

For object classification, soft assignment (SA) is capable of improving the bag-of-visual-words (BoVW) model and has the advantages in conceptual simplicity. However, the performance of soft assignment is inferior to those recently developed encoding schemes. In this paper, we propose a novel scheme called barycentric coordinates based soft assignment (BCSA) for the classification of object images. While maintaining conceptual simplicity, this scheme will be shown to outperform most of the existing encoding schemes, including sparse and local coding schemes. Furthermore, with only single-scale features, it is able to achieve comparable or even better performance to current state-of-the-art Fisher kernel (FK) encoding scheme. In particular, the proposed BCSA scheme enjoys the following properties: 1) preservation of linear order precision for encoding which makes BCSA robust to linear transform distortions; 2) inheriting naturally the visual word uncertainty which leads to a more expressive model; 3) generating linear classifiable codes that can be learned with significant less computational cost and storage. Extensive experiments based on widely used Caltech-101 and Caltech-256 datasets have been carried out to show its effectiveness of the proposed BCSA scheme in both performance and simplicity.
机译:对于对象分类,软分配(SA)能够改善视觉袋(BOVW)模型,并具有概念性简单的优点。但是,软分配的性能不如最近开发的编码方案的性能。在本文中,我们提出了一种用于基于BaryCentric Coordinate的基于软分配(BCSA)的新颖方案,用于对象图像的分类。在保持概念简单性的同时,将显示该方案以优于大多数现有编码方案,包括稀疏和本地编码方案。此外,只有单尺度的功能,它能够实现对当前最先进的Fisher内核(FK)编码方案的可比性甚至更好的性能。特别是,所提出的BCSA方案享有以下性质:1)保存用于编码的线性顺序精度,使BCSA成为线性变换扭曲的鲁棒性能; 2)继承自然的视觉词不确定性,导致更具表现力的模型; 3)生成可以以显着较少的计算成本和存储而学习的线性分类代码。已经进行了基于广泛使用的CALTECH-101和CALTECH-256数据集的广泛实验,以表明其拟议的BCSA方案在性能和简单方面的有效性。

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