Contour Completion of Partly Occluded Objects Based on Figural Goodness

Takahiro Hayashi, Tatsuya Ooi, Motoki Sasaki
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引用次数: 6

Abstract

Object extraction has a crucial role in various visual semantic scenarios. In this paper, we propose a system for object extraction which can deal with an object partly occluded by other objects. In order to estimate the hidden part of the occluded object, the system combines different types of contour completion methods such as curve completion and symmetry completion. The system is composed of two modules: contour discrimination and contour completion. The contour discrimination module separates the contour of the occluded object from the contours of the occluding objects. To the contour of the occluded object, the contour completion module applies different types of contour completion algorithms to generate various completion patterns. Based on the perceptual model of figural goodness, the system computes the figural goodness scores of the generated patterns, where the simplicity and symmetricity are evaluated. Finally, the system outputs the pattern having the highest score as a result of the object extraction. From the experimental results, we have confirmed that the figural goodness model works effectively for extracting partly occluded objects.
基于图形良度的部分遮挡物体轮廓补全
对象提取在各种视觉语义场景中起着至关重要的作用。本文提出了一种能够处理被其他物体部分遮挡的物体的目标提取系统。为了估计被遮挡物体的隐藏部分,该系统结合了曲线补全和对称补全等不同类型的轮廓补全方法。该系统由轮廓判别和轮廓补全两个模块组成。轮廓识别模块将被遮挡物体的轮廓与被遮挡物体的轮廓分离。对于被遮挡物体的轮廓,轮廓补全模块采用不同类型的轮廓补全算法,生成各种补全模式。基于图形良度的感知模型,系统计算生成图案的图形良度分数,其中评估简单性和对称性。最后,系统输出得分最高的模式作为对象提取的结果。实验结果表明,图像良度模型可以有效地提取部分遮挡目标。
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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