首页> 外文期刊>International Journal of Computer Vision >WhittleSearch: Interactive Image Search with Relative Attribute Feedback
【24h】

WhittleSearch: Interactive Image Search with Relative Attribute Feedback

机译:WhittleSearch:具有相对属性反馈的交互式图像搜索

获取原文
获取原文并翻译 | 示例
       

摘要

We propose a novel mode of feedback for image search, where a user describes which properties of exemplar images should be adjusted in order to more closely match his/her mental model of the image sought. For example, perusing image results for a query "black shoes", the user might state, "Show me shoe images like these, but sportier." Offline, our approach first learns a set of ranking functions, each of which predicts the relative strength of a nameable attribute in an image (e.g., sportiness). At query time, the system presents the user with a set of exemplar images, and the user relates them to his/her target image with comparative statements. Using a series of such constraints in the multi-dimensional attribute space, our method iteratively updates its relevance function and re-ranks the database of images. To determine which exemplar images receive feedback from the user, we present two variants of the approach: one where the feedback is user-initiated and another where the feedback is actively system-initiated. In either case, our approach allows a user to efficiently "whittle away" irrelevant portions of the visual feature space, using semantic language to precisely communicate her preferences to the system. We demonstrate our technique for refining image search for people, products, and scenes, and we show that it outperforms traditional binary relevance feedback in terms of search speed and accuracy. In addition, the ordinal nature of relative attributes helps make our active approach efficient-both computationally for the machine when selecting the reference images, and for the user by requiring less user interaction than conventional passive and active methods.
机译:我们提出了一种新颖的图像搜索反馈模式,用户在其中描述了示例性图像的哪些属性应进行调整,以便更紧密地匹配他/她所寻求图像的心理模型。例如,细读查询“黑色鞋子”的图像结果,用户可能会说“向我展示这些鞋子图像,但更具运动性”。在离线状态下,我们的方法首先学习一组排名函数,每个排名函数都可以预测图像中可命名属性的相对强度(例如,运动性)。在查询时,系统向用户提供一组示例图像,并且用户使用比较语句将它们与他/她的目标图像相关联。通过在多维属性空间中使用一系列此类约束,我们的方法可以迭代地更新其相关性函数并重新排列图像数据库的排名。为了确定哪些样例图像接收到来自用户的反馈,我们介绍了该方法的两种变体:一种是用户启动反馈,另一种是系统主动启动反馈。无论哪种情况,我们的方法都允许用户使用语义语言将用户的偏好准确地传达给系统,从而有效地“消瘦”视觉特征空间的不相关部分。我们展示了用于细化人物,产品和场景的图像搜索的技术,并且在搜索速度和准确性方面,它优于传统的二进制相关性反馈。此外,相对属性的序数性质有助于使我们的主动方法高效(在选择参考图像时,对于机器而言,对于计算而言),对于用户而言,与传统的被动和主动方法相比,所需的用户交互更少。

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