首页> 外文会议>Electronic Imaging and Multimedia Technology V >Photo collection representation based on viewpoint clustering
【24h】

Photo collection representation based on viewpoint clustering

机译:基于视点聚类的照片集表示

获取原文

摘要

The users of digital cameras often take multiple photographs of the same scene. Such multiple shots usually have a special meaning to the photographer, and require further actions, e.g. selection of the best exposure/composition/portrait or stitching several images into a panorama or composite image. We present a method of fast retrieval of all groups of shots taken from the same viewpoint. This task is different from the recently emerged near-duplicate detection problem because, in our case, the multiple shots differ not only by photometric and simple geometric transformations; they can have a little or no overlap, and large variations of objects may be presented. Therefore, we solve a general multiple image registration problem by extracting local image descriptors, their matching, and recovering geometric transformation between images. Initially, the photo-collection is divided in time-based clusters, which are then refined by extracting connected components from the global image registration graph. The method has been applied to real consumer photo-collections, and we show that depending on individual camera usage styles, user collections contain from 15% to 90% of photos requiring further attention. The presented system automates the otherwise manual work of selecting a series of similar images.
机译:数码相机的用户经常为同一场景拍摄多张照片。这样的多次拍摄通常对于摄影者而言具有特殊的意义,并且需要进一步的动作,例如摄影。选择最佳曝光/构图/人像或将几幅图像拼接成全景图像或合成图像。我们提出一种从相同角度快速检索所有镜头组的方法。这项任务与最近出现的近重复检测问题不同,因为在我们的案例中,多次拍摄不仅通过光度学和简单的几何变换而有所不同;它们可能有一点重叠或没有重叠,并且可能会呈现对象的较大变化。因此,我们通过提取局部图像描述符,它们的匹配以及恢复图像之间的几何变换来解决一般的多图像配准问题。最初,将照片集合划分为基于时间的聚类,然后通过从全局图像配准图中提取连接的分量来对其进行细化。该方法已应用于真实的消费者照片集,并且我们证明,根据个别相机的使用方式,用户集包含15%至90%的照片需要进一步关注。所提出的系统使选择一系列相似图像的手动操作自动化。

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