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Recognition of partially occluded objects in 2D images

机译:识别2D图像中部分被遮挡的物体

摘要

Object recognition is spread across too many fields such as industrial, image retrieval and medical models. A human being can identify the objects with high performance and professionalism; on the other hand, a machine facing difficultly and effort to identify the object. In order to facilitate the process of identifying and analyzing objects easily using the machine, researchers worked hard to create new technologies and develop technologies that already exist for this purpose. The boundaries of computer vision are especially challenged by partial occluded object recognition. The aim of our research is to propose an algorithm using to recognize the partially occluded objects in two different cases: an object missing some part and objects are overlapping each other. The dataset that used in this research is silhouette images; we chose 60 images to represent the occluded object which missing part of the object. These images divided into three categories according to the percentages of the occlusion, and overlapping objects contains 36 images (each scene contains two objects). We collected those images from the MPEG-7 dataset downloaded it from the Internet. Adaptive Window is the purpose technique for extracting the features. Dynamic Time Warping (DTW) works for matching between objects. Orientation field is used to calculate the angle of a window's fragment. Algorithm goes through multiple stages, starting with the pre-processing through extract features from images and ends by comparing the images that enable us to obtain results of the matching, performance and efficiency of this algorithm. The experiments results demonstrate that the proposed algorithm is robust to identify missing and overlapping objects and it can work with strength occlusion.
机译:对象识别分布在许多领域,例如工业,图像检索和医学模型。人可以识别出具有高性能和专业精神的物体;另一方面,机器面对困难并且难以识别物体。为了促进使用机器轻松地识别和分析对象的过程,研究人员努力创建新技术并开发为此目的已经存在的技术。计算机视觉的边界尤其受到部分遮挡物体识别的挑战。我们研究的目的是提出一种算法,用于在两种不同情况下识别部分遮挡的对象:缺少某些部分的对象和对象彼此重叠。本研究中使用的数据集是轮廓图像。我们选择了60张图像来表示被遮挡的对象,该图像缺少该对象的一部分。这些图像根据遮挡的百分比分为三类,重叠的对象包含36个图像(每个场景包含两个对象)。我们从从互联网上下载的MPEG-7数据集中收集了这些图像。自适应窗口是提取特征的目的技术。动态时间规整(DTW)用于对象之间的匹配。方向字段用于计算窗口片段的角度。该算法经历了多个阶段,从通过提取图像特征进行预处理开始,最后通过比较图像使我们获得该算法的匹配,性能和效率的结果。实验结果表明,该算法对于识别丢失和重叠的物体具有鲁棒性,并且可以与强度遮挡一起使用。

著录项

  • 作者

    Mohammed Ali Almuashi;

  • 作者单位
  • 年度 2013
  • 总页数
  • 原文格式 PDF
  • 正文语种 en
  • 中图分类

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