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Content-based image retrieval using fuzzy class membership and rules based on classifier confidence

机译:基于模糊分类隶属度和基于分类器置信度的规则的基于内容的图像检索

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摘要

Content representation for images with well-defined inter-class boundaries in the feature space remains to be a difficult task. Simple distance-based retrieval (SDR) approaches those operate on the feature space for content-based image retrieval (CBIR) are, therefore claimed to be inefficient by many researchers. Different CBIR approaches have been proposed to surmount the drawbacks of SDR scheme. This study proposes a novel image retrieval scheme. In this scheme, effort is taken to reduce the overall search time of the recently proposed approach called ‘class membership-based retrieval’ (CMR). The proposed method identifies the confidence in the classification and limits the search to single output class and therefore, reduces the overall search time by 21.76% as compared to CMR. Quantitative methods are proposed to select various parameters used in the algorithm which were computed empirically in the case of earlier approach CMR. The computed parameters are validated using experimental results. The consistent behaviours of the proposed method and earlier methods used in the experiment are demonstrated using different feature sets and distance metrics. While the method can be used as a general purpose image retrieval system, experiment is performed on four texture databases wit different complexities in terms of size, number of texture classes and orientation.
机译:在特征空间中具有明确定义的类间边界的图像的内容表示仍然是一项艰巨的任务。因此,许多研究人员声称,简单的基于距离的检索(SDR)方法是在特征空间上进行基于内容的图像检索(CBIR)的操作,因此效率低下。已经提出了不同的CBIR方法来克服SDR方案的缺点。这项研究提出了一种新颖的图像检索方案。在此方案中,我们努力减少了最近提出的称为“基于类别成员资格的检索”(CMR)的方法的总体搜索时间。所提出的方法确定了分类的可信度,并将搜索限制在单个输出类别,因此,与CMR相比,将整个搜索时间减少了21.76%。提出了定量方法来选择算法中使用的各种参数,这些参数是在较早方法CMR的情况下凭经验计算的。使用实验结果验证了计算出的参数。使用不同的特征集和距离度量,证明了所提出的方法与实验中使用的早期方法的一致行为。虽然该方法可以用作通用图像检索系统,但在四个纹理数据库上进行了实验,这些数据库在大小,纹理类别的数量和方向方面具有不同的复杂性。

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