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A Novel Active Learning Method in Relevance Feedback for Content-Based Remote Sensing Image Retrieval

机译:基于内容的遥感图像检索中相关反馈的主动学习新方法

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摘要

Conventional relevance feedback (RF) schemes improve the performance of content-based image retrieval (CBIR) requiring the user to annotate a large number of images. To reduce the labeling effort of the user, this paper presents a novel active learning (AL) method to drive RF for retrieving remote sensing images from large archives in the framework of the support vector machine classifier. The proposed AL method is specifically designed for CBIR and defines an effective and as small as possible set of relevant and irrelevant images with regard to a general query image by jointly evaluating three criteria: 1) uncertainty; 2) diversity; and 3) density of images in the archive. The uncertainty and diversity criteria aim at selecting the most informative images in the archive, whereas the density criterion goal is to choose the images that are representative of the underlying distribution of data in the archive. The proposed AL method assesses jointly the three criteria based on two successive steps. In the first step, the most uncertain (i.e., ambiguous) images are selected from the archive on the basis of the margin sampling strategy. In the second step, the images that are both diverse (i.e., distant) to each other and associated to the high-density regions of the image feature space in the archive are chosen from the most uncertain images. This step is achieved by a novel clustering-based strategy. The proposed AL method for driving the RF contributes to mitigate problems of unbalanced and biased set of relevant and irrelevant images. Experimental results show the effectiveness of the proposed AL method.
机译:常规的相关性反馈(RF)方案提高了基于内容的图像检索(CBIR)的性能,要求用户注释大量图像。为了减少用户的标注工作量,本文提出了一种新颖的主动学习(AL)方法来驱动RF,以在支持向量机分类器的框架中从大型档案中检索遥感图像。所提出的AL方法是专门为CBIR设计的,并通过联合评估三个标准来定义与一般查询图像有关的有效且尽可能小的一组相关和不相关图像。 2)多样性; 3)档案中图像的密度。不确定性和多样性标准旨在选择档案中信息量最大的图像,而密度标准目标是选择代表档案中数据基础分布的图像。所提出的AL方法基于两个连续步骤共同评估了这三个标准。第一步,根据裕度采样策略,从档案中选择最不确定(即模棱两可)的图像。在第二步骤中,从最不确定的图像中选择彼此不同(即相距很远)并且与档案中图像特征空间的高密度区域相关联的图像。此步骤通过一种新颖的基于聚类的策略来实现。所提出的用于驱动RF的AL方法有助于减轻相关和不相关图像的不平衡和偏差集合的问题。实验结果表明了所提方法的有效性。

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