Enhance support relation extraction accuracy using improvement of segmentation in RGB-D images

Shokouh S. Ahmadi, Hassan Khotanlou
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引用次数: 1

Abstract

Todays, increasing in machine vision fields and applications make it necessary to have accurate scene understanding and analyzing. Support relation extraction is one of the most important and critical problem in robotic and machine vision task. In this article, we enhance support relation extraction accuracy using improvement of segmentation. Having the depth, moreover the color, in RGB-D images enable us to obtain accurate and precise support relation. In this paper an approach is also presented to redress discontinuities in point cloud occurred while recording. Experimental result shows the accuracy of the extracted support relation will be significantly increase after segmentation improvement.
改进RGB-D图像的分割,提高支持关系提取的精度
如今,机器视觉领域和应用的不断增加,使得对场景的准确理解和分析成为必要。支持关系提取是机器人和机器视觉任务中最重要、最关键的问题之一。在本文中,我们通过改进分割来提高支持关系提取的准确性。在RGB-D图像中,有了深度,就有了颜色,使我们能够获得准确、精确的支持关系。本文还提出了一种校正记录过程中出现的点云不连续现象的方法。实验结果表明,经过分割改进后,提取的支持关系的准确率显著提高。
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