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Integrated Visual Saliency Based Local Feature Selection for Image Retrieval

机译:基于集成的视觉显着性的图像检索的本地特征选择

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摘要

nowadays, local features are widely used for content-based image retrieval. Effective feature selection is very important for the improvement of retrieval performance. Among various local feature extraction methods, Scale Invariant Feature Transform (SIFT) has been proven to be the most robust local invariant feature descriptor. However, the algorithm often generates hundreds of thousands of features per image, which has seriously affected the application of SIFT in content-based image retrieval. Therefore, this paper addresses this problem and proposes a novel method to select salient and distinctive local features using integrated visual saliency analysis. Based on our method, all of the SIFT features in an image are ranked with their integrated visual saliency, and only the most distinctive features will be reserved. The experiments demonstrate that the integrated visual saliency analysis based feature selection algorithm provides significant benefits both in retrieval accuracy and speed.
机译:如今,本地特征广泛用于基于内容的图像检索。有效的特征选择对于提高检索性能非常重要。在各种本地特征提取方法中,已被证明是规模不变特征变换(SIFT)是最强大的本地不变功能描述符。然而,该算法通常产生数十万个特征,这严重影响了SIFT在基于内容的图像检索中的应用。因此,本文解决了这个问题,并提出了一种使用集成视觉显着分析选择突出和独特局部特征的新方法。基于我们的方法,图像中的所有SIFT功能都以其集成的视觉显着性排序,并且只保留最独特的功能。实验表明,基于集成的视觉显着性分析的特征选择算法在检索精度和速度方面提供了显着的益处。

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