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A hybrid algorithm based on improved LLE and k-means for visual codebook generation in scene classification

机译:一种基于改进LLE和K-inse的杂交算法在场景分类中的视觉码本生成

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This paper proposes a hybrid algorithm based on improved LLE and adaptive k-means for visual codebook generation in tourism scene classification. Firstly, we construct the improved LLE algorithm to get lower dimensional and compressed image feature representations. Then we form the adaptive k-means clustering algorithm to generate the visual codebook. Finally, we use the visual codebook histogram to represent the samples and train the SVM classifier for scene classification task. Experiments are conducted on a Beijing tourism scene dataset to evaluate the performance of the hybrid algorithm. Experimental results show that our algorithm can effectively improve the robustness of the visual codebook and result in a satisfying performance of scene classification.
机译:本文提出了一种基于改进的LLE和自适应k型的混合算法,用于在旅游场景分类中的视觉码本生成。首先,我们构建改进的LLE算法以获得较低的维度和压缩图像特征表示。然后我们形成自适应k-means聚类算法以生成Visual Codebook。最后,我们使用Visual Codebook直方图来表示样本并为场景分类任务列车训练SVM分类器。实验是在北京旅游场景数据集上进行的,以评估混合算法的性能。实验结果表明,我们的算法可以有效地改善了视觉码本的鲁棒性,并导致了令人满意的场景分类性能。

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