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A Novel Image Classification Method Based on Bag-of-Words Framework

机译:一种基于袋式框架的新型图像分类方法

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摘要

In this paper, a novel image classification method is proposed with a Bag-of-Words framework. For its simplified characteristics, the Bag-of-Words method is widely used in fields such as image classification and object recognition. Nevertheless, it still has some challenges, e.g., one single feature cannot always describe the information of a whole image, and the visual words allocation mechanism cannot represent the image better. Accordingly, two methods are proposed in this paper. For the first problem, a feature-fusion method is used by combining SIFT and HOG features. For the second, a soft threshold visual word allocation mechanism is put forward, in which k-means method is adopted to cluster the syncretic feature and form a “Visual Dictionary“, where each of the visual words with different weights is assigned to. Meanwhile, to add the image's spatial information, SPM theory is combined within the Bag-of-Words framework by using an SVM classifier to classify the image. Experiments on the Caltech-101 and Scene-15 datasets show that the proposed method outperforms the traditional methods.
机译:在本文中,提出了一种具有单词袋框架的新颖的图像分类方法。对于其简化的特征,文字袋方法广泛用于诸如图像分类和对象识别的领域。然而,它仍然存在一些挑战,例如,一个单一特征不能总是描述整个图像的信息,并且视觉单词分配机制不能更好地表示图像。因此,本文提出了两种方法。对于第一个问题,通过组合SIFT和HOG功能来使用特征融合方法。对于第二,提出了软阈值视觉文字分配机制,其中采用K-ulit方法来聚类了综合特征并形成“视觉字典”,其中分配具有不同权重的每个视觉单词。同时,为了添加图像的空间信息,SPM理论通过使用SVM分类器来对图像进行分类来组合在单词袋框架内。 CALTECH-101和场景-15数据集上的实验表明,该方法优于传统方法。

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