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Self-adaptive Feature Extraction Scheme for Mobile Image Retrieval of Flowers

机译:用于移动图像检索的自适应特征提取方案

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This paper proposes a new self-adaptive feature extraction scheme to improve retrieval precision for Content-based Image Retrieval (CBIR) systems on mobile phones such that users can search similar pictures for a query image taken from their mobile phones. The proposed methods employ a newly modified extraction method using the Canny edge-based Edge Histogram Descriptor (CEHD), Color Layout Descriptor (CLD) and the Curvature Scale Space (CSS) shape-based descriptor. To obtain object shapes, salient regions are detected by means of a multi-scale self-developed segmentation model. Experiments were conducted using flower images as image data in order to verify the most pertinent feature extraction methods in designing a domain knowledge-driven self-adaptive feature extraction scheme. Test results prove that the CSS descriptor is useful to determine prominent features of a flower image before employing additional extraction techniques. By that means, the system can enhance retrieval precision and avoid unnecessarily extracting insignificant features.
机译:本文提出了一种新的自适应特征提取方案,提高移动电话上基于内容的图像检索(CBIR)系统的检索精度,使得用户可以搜索从他们的移动电话拍摄的查询图像的类似图片。所提出的方法使用基于Canny Edge的边缘直方图描述符(CEHD),颜色布局描述符(CLD)和曲率刻度空间(CSS)形状的描述符的新修改的提取方法。为了获得物体形状,通过多尺度自开发的分割模型来检测凸极区域。使用花图像作为图像数据进行实验,以验证设计域知识驱动的自适应特征提取方案的最相关的特征提取方法。测试结果证明了CSS描述符可用于在采用额外的提取技术之前确定花图像的突出特征。通过这种方式,系统可以增强检索精度并避免不必要地提取微不足道的特征。

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