Region-based tracking using sequences of relevance measures

Sandy Martedi, B. Thomas, H. Saito
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引用次数: 6

Abstract

We present the preliminary results of our proposal: a region-based detection and tracking method of arbitrary shapes. The method is designed to be robust against orientation and scale changes and also occlusions. In this work, we study the effectiveness of sequence of shape descriptors for matching purpose. We detect and track surfaces by matching the sequences of descriptor so called relevance measures with their correspondences in the database. First, we extract stable shapes as the detection target using Maximally Stable Extreme Region (MSER) method. The keypoints on the stable shapes are then extracted by simplifying the outline of the stable regions. The relevance measures that are composed by three keypoints are then computed and the sequences of them are composed as descriptors. During runtime, the sequences of relevance measures are extracted from the captured image and are matched with those in the database. When a particular region is matched with one in the database, the orientation of the region is then estimated and virtual annotations can be superimposed. We apply this approach in an interactive task support system that helps users for creating paper craft objects.
使用相关度量序列的基于区域的跟踪
我们提出了我们的建议的初步结果:基于区域的检测和跟踪任意形状的方法。该方法被设计为对方向和规模变化以及遮挡具有鲁棒性。在这项工作中,我们研究了用于匹配目的的形状描述符序列的有效性。我们通过将描述符的序列与数据库中的对应关系进行匹配来检测和跟踪表面。首先,利用最大稳定极值区域(MSER)方法提取稳定形状作为检测目标;然后通过简化稳定区域的轮廓来提取稳定形状上的关键点。然后计算由三个关键点组成的相关性度量,并将它们的序列组成描述符。在运行时,从捕获的图像中提取相关度量序列,并与数据库中的相关度量序列进行匹配。当一个特定的区域与数据库中的一个区域匹配时,然后估计该区域的方向,并可以叠加虚拟注释。我们将这种方法应用于一个交互式任务支持系统,该系统可以帮助用户创建纸质工艺品。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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