Improved bags-of-words algorithm for scene recognition

Jiang Hao, Xu Jie
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引用次数: 12

Abstract

This paper proposes an effective method to scene recognition based on bags-of-words (BoW) algorithm. Current scene classification methods usually treat all the codewords equally important when using BoW histogram to represent an image. This assumption, however, does not comply with many real-world conditions as different codewords usually have different discriminating power when representing different scene categories. Considering this, this paper proposes an effective technique to perform scene recognition. It first uses k-means algorithm to construct a codebook, in addition with an occurrence matrix. The importance of each codeword for each scene category is then estimated based on the above cooccurrence matrix. Finally this discrimination information is incorporated into the original BoW histogram of the image and produces a new BoW histogram. Support vector machine (SVM) is used to train these BoW histograms. Experimental results on the 15 scene dataset show that the proposed method is very effective compared with state-of-art works.
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改进的场景识别词袋算法
提出了一种有效的基于词袋算法的场景识别方法。当前的场景分类方法在使用BoW直方图表示图像时,通常对所有码字同等重要。然而,这种假设并不符合现实世界的许多条件,因为不同的码字在表示不同的场景类别时通常具有不同的判别能力。为此,本文提出了一种有效的场景识别技术。首先使用k-means算法构造一个码本,外加一个发生矩阵。然后根据上述协同矩阵估计每个场景类别的每个码字的重要性。最后将该判别信息合并到图像的原BoW直方图中,生成新的BoW直方图。使用支持向量机(SVM)来训练这些BoW直方图。在15个场景数据集上的实验结果表明,与现有方法相比,该方法是非常有效的。
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