...
首页> 外文期刊>EURASIP journal on image and video processing >Scene search based on the adapted triangular regions and soft clustering to improve the effectiveness of the visual-bag-of-words model
【24h】

Scene search based on the adapted triangular regions and soft clustering to improve the effectiveness of the visual-bag-of-words model

机译:基于适应三角形区域和软群的场景搜索,提高视觉袋式模型的效果

获取原文
           

摘要

Abstract The storage size of the image and video repositories are growing day by day due to the extensive use of digital image acquisition devices. The position of an object within an image is obtained by analyzing the content-based properties like shape, texture, and color, while compositional properties present the image layout and include the photographic rule of composition. The high-quality images are captured on the basis of the rule of thirds that divide each image into nine square areas. According to this rule, salient objects of an image are placed on the intersection points or along the imagery lines of the grid to capture the position of the salient objects. To improve image retrieval performance, visual-bag-of-words (VBoW) framework-based image representation is widely used nowadays. According to this framework, the spatial relationship between salient objects of an image is lost due to the formation of a global histogram of the image. This article presents a novel adapted triangular area-based technique, which computes local intensity order pattern (LIOP) features, weighted soft codebooks, and triangular histograms from the four triangular areas of each image. The proposed technique adds the spatial contents from four adapted triangular areas of each image to the inverted index of the VBoW framework, solve overfitting problem of the larger sizes of the codebook, and overwhelmed the problem of the semantic gap. The experimental results and statistical analysis performed on five image collections show an encouraging robustness of the proposed technique that is compared with the recent CBIR techniques.
机译:摘要由于数字图像采集设备的广泛使用,图像和视频存储库的存储大小正在日益增加。通过分析形状,纹理和颜色等基于内容的性质,而组成特性呈现图像布局并包括拍摄组合规则的组合物规则,可以获得图像内的位置。基于第三个规则捕获高质量图像,该规则将每个图像分为九个平方区域。根据该规则,图像的突出对象被放置在交叉点或沿网格的图像线以捕获突出对象的位置。为了提高图像检索性能,目前广泛使用视觉袋(VWOW)基于框架的图像表示。根据该框架,由于图像的全局直方图的形成,图像的突出对象之间的空间关系丢失。本文介绍了一种新颖适应的三角形区域技术,其计算来自每个图像的四个三角形区域的局部强度阶模式(LIOP)特征,加权软码本和三角形直方图。所提出的技术从每个图像的四个适应三角形区域添加到vbow框架的反相索引的空间内​​容,解决了码本的较大尺寸的过度拟合问题,并且不堪重负语义差距问题。对五种图像收集进行的实验结果和统计分析显示了与最近的CBIR技术相比的提出技术的令人鼓舞的稳健性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号