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SIFT features of fusion region information entropy in Bag-of-Words

机译:融合区域信息套件中的筛选特征

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In the object recognition based on the bag of visual words, we focus on several main feature extraction algorithms. The Scale Invariant Feature Transform (SIFT) that based on local features with good significance and robustness has became a popular feature extraction method. But we take into consideration that the SIFT will generate a large number of high-dimensional feature vectors, which will increase the computational cost. In this paper, a novel feature extraction algorithm by means of SIFT to fuse region information entropy (SIFT-entropy) is proposed. The algorithm can improve the quality of the feature extracted from the image by cluster similar key points to removing the noisy key points. So a more discriminative high quality “visual word” codebook could be generated. We made a comprehensive comparison between the proposed method and the original SIFT method on Caltech-101 database. The experimental results show that this improvement can reduce the dimension of the feature space, and has higher classification accuracy.
机译:在基于视觉单词袋的对象识别中,我们专注于几个主要特征提取算法。基于具有良好意义和鲁棒性的本地特征的规模不变特征转换(SIFT)已成为一种流行的特征提取方法。但我们考虑到SIFT将产生大量的高维特征向量,这将增加计算成本。本文提出了一种通过筛选到熔丝区域信息熵(筛选熵)的新特征提取算法。该算法可以通过群集类似的关键点来提高从图像中提取的特征的质量,以删除嘈杂的关键点。因此,可以生成更辨别的高质量“视觉字”码本。我们在CALTECH-101数据库上进行了建议的方法和原始SIFT方法进行了全面的比较。实验结果表明,这种改进可以减少特征空间的尺寸,并且具有更高的分类精度。

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