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Content-based image retrieval using feature weighting and C-means clustering in a multi-label classification framework

机译:基于内容的图像检索使用特征加权和C-means群集在多标签分类框架中

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摘要

In this paper, a novel learning algorithm based on feature weighting is proposed to improve the performance of image classification or retrieval systems in a multi-label framework. The goal is to exploit maximally the beneficial properties of each feature in the system. Since each feature can separate more effectively some of the image classes, it is hypothesized that the weights of various features at some states can be traded off against each other. The training phase of the suggested algorithm is performed in two stages: (1) The input images are clustered using a supervised C-means method iteratively; (2) image features are weighted using a local feature weighting method in each cluster. These weights are determined by considering the importance of each feature in minimizing the classification error on each cluster. In the testing phase, the cluster corresponding to the query is found first. Then, the most similar images are retrieved in the multi-label framework using the feature weights assigned to that cluster. Experimental results on three well-known, public and international image datasets demonstrate that our proposed method leads to significant performance gains over existing methods.
机译:本文提出了一种基于特征加权的新型学习算法,提高了多标签框架中的图像分类或检索系统的性能。目标是最大限度地利用系统中每个功能的有益特性。由于每个特征可以更有效地分离一些图像类,因此假设某些状态的各种特征的权重可以彼此交换。建议算法的训练阶段是在两个阶段执行的:(1)迭代的C-ulient方法集群群集输入图像; (2)使用每个簇中的本地特征加权方法加权(2)图像特征。通过考虑最小化每个群集的分类错误来确定这些权重。在测试阶段,首先找到与查询对应的群集。然后,使用分配给该群集的特征权重在多标签框架中检索最相似的图像。三个众所周知,公共和国际形象数据集的实验结果表明,我们的提出方法导致现有方法的显着性能。

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