用于对象识别的特征级组合

Mehrdad Ahmadi Soofivand, A. Amirkhani, M. Daliri, Gholamali Rezaeirad
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引用次数: 2

摘要

近年来,利用信息组合方法设计分类算法受到了广泛的关注。在机器视觉中,为了克服图像类别之间的高度类间变化,已经设计了各种特征描述符以对这些类间变化具有鲁棒性。然而,没有一个单一的特征可以对所有图像类中的这些变化具有鲁棒性。因此,在多类图像的分类中,结合不同的互补特征来区分每一类与所有其他类,受到了人们的广泛关注。本文采用特征级集成方法对图像进行分类。首先对特征进行处理和组合,构建新的特征向量。提出的预处理方法使特征组合成为可能,显著提高了目标识别性能。使用这种方法,可以将每种类型的特征组合在一起。本文采用该方法将SIFT、LBP、PHOG和GIST描述符进行组合。此外,采用线性核支持向量机分类器对图像进行分类。所提出的组合方法已应用于Caltech-101数据集,结果表明,分类性能提高了约2- 3%。需要说明的是,与其他数据集成方法相比,所提出的算法非常简单,计算复杂度非常低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature level combination for object recognition
In recent years, the design of classification algorithms, with the aid of information combination methods, has received a considerable attention. In machine vision, in order to overcome the high inter-class variations between the classes of image, various feature descriptors have been designed to be robust to these inter-class variations. However, no single feature can be robust to these variations in all image classes. Therefore, the combination of different complementary features to distinguish each class from all other classes in the classification of the multi-class image, has received much attention. In this paper, the feature-level integration method has been used to classify the images. At first, features are processed and combined, and a new feature vector is built. The proposed pre-processing method, which has made it possible to combine features, significantly increases the object recognition performance. With this method, each type of feature can be combined. In this paper, this method has been employed in order to combine the SIFT, LBP, PHOG, and GIST descriptors. In addition, the SVM classifier with linear kernel has been used to classify images. The proposed combination method has been applied on the Caltech-101 dataset and as a result, the classification performance increased by about 2-3 percent. It should be stated that the proposed algorithm is very simple and the computational complexity is very low compared to other data integration methods.
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