An Interactive Approach for Retrieval of Semantically Significant Images

Pranoti P. Mane, N. Bawane
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引用次数: 2

Abstract

Content-based image retrieval is the process of recovering the images that are based on their primitive features such as texture, color, shape etc. The main challenge in this type of retrieval is the gap between lowlevel primitive features and high-level semantic concepts. This is known as the semantic gap. This paper proposes an interactive approach for optimizing the semantic gap. The primitive features used are HSV histogram, local binary pattern histogram, and color coherence vector histogram. The mapping between primitive features of the image and its semantic concepts is done by involving the user in the feedback loop. Proposed primitive feature extraction method shows improved image retrieval results (Average precision 73.1%) over existing methods. We have proposed an innovative relevance feedback technique in which the concept of prominent features is introduced. On the application of the relevance feedback, only prominent features which are having maximum similarity are utilized. This method reduces the feature length and increases the efficiency. Our own interactive approach for relevance feedback is not only computationally simple and fast but also shows improvement in the retrieval of semantically meaningful relevant images as we go on increasing the iterations.
语义重要图像检索的交互式方法
基于内容的图像检索是根据图像的纹理、颜色、形状等原始特征对图像进行恢复的过程。这种类型检索的主要挑战是低级原语特征和高级语义概念之间的差距。这就是所谓的语义差距。本文提出了一种交互式的语义缺口优化方法。使用的原始特征有HSV直方图、局部二值模式直方图和颜色相干矢量直方图。图像的基本特征与其语义概念之间的映射是通过用户参与反馈循环来完成的。本文提出的原始特征提取方法与现有方法相比,图像检索的平均精度达到73.1%。我们提出了一种创新的相关反馈技术,其中引入了突出特征的概念。在相关反馈的应用中,只利用具有最大相似性的显著特征。该方法减少了特征长度,提高了效率。我们自己的交互式相关反馈方法不仅计算简单、快速,而且随着迭代次数的增加,在检索语义上有意义的相关图像方面也有所改善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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