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The research of descriptor extraction accelerated method based on image content retrieval

机译:基于图像内容检索的描述符提取加速方法研究

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Low-level image feature extraction and index is a necessary step for content based image retrieval, but traditional feature extraction method for large size and large capacity images is usually time-consuming. However, this kind of image retrieval is the trend of the development of Internet image retrieval. This paper proposes a random feature extraction method based on compressive sampling which selects 1% of the image pixels through the random mask to extract low-level feature vector. In this paper, the method is used in MPEG - 7 dominant color descriptor (DCD) and edge histogram descriptor (EHD) extraction, and discusses the influence of different masks on image low-level feature extraction accuracy. The experiment proves that this method can effectively improve the efficiency of the low-level feature extraction without affecting the extraction accuracy.
机译:低级图像特征提取和索引是基于内容的图像检索的必要步骤,但是用于大尺寸和大容量图像的传统特征提取方法通常很耗时。但是,这种图像检索是互联网图像检索发展的趋势。提出了一种基于压缩采样的随机特征提取方法,该方法通过随机掩模选择1%的图像像素来提取低级特征向量。本文将该方法用于MPEG-7主色描述符(DCD)和边缘直方图描述符(EHD)提取,并讨论了不同蒙版对图像低级特征提取精度的影响。实验证明,该方法可以有效提高低级特征提取的效率,而又不影响提取精度。

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