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High-speed and Reliable Object Recognition based on Low-dimensional Local Shape Features

机译:基于低维本地形状特征的高速可靠的对象识别

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摘要

In this paper, we propose a high-speed 3-D object recognition method using new feature values. Features for the object recognition method proposed in this study consist of three values. One is the Difference of Normals (DoN) feature value that has been proposed by Ioannou. The other two represent information about curvature. We use these three-dimensional features to recognize the position and pose of multiple objects stacked randomly. Because they are low-dimensional, high-speed matching can be achieved. We have also reduced the computing time needed for data matching by using only effective points selected on the basis of their estimated distinctiveness. Experimental results using actual scenes have demonstrated that the computing time is about 93 times faster than that of the conventional SHOT method. Furthermore, the proposed method achieves a 98.2% recognition rate, which is 17.9% higher than that of the SHOT method. Also, we confirmed that the proposed method achieves higher-speed matching and higher recognition success rate than the conventional methods.
机译:在本文中,我们提出了一种使用新特征值的高速3-D对象识别方法。本研究中提出的对象识别方法的特征由三个值组成。一个是Ioannou提出的法线(Don)特征值的差异。另外两个代表有关曲率的信息。我们使用这些三维特征来识别随机堆叠的多个对象的位置和姿势。因为它们是低维的,所以可以实现高速匹配。我们还通过仅使用基于其估计的独特性选择的有效点来减少数据匹配所需的计算时间。使用实际场景的实验结果表明,计算时间比传统拍摄方法快速快93倍。此外,该方法达到98.2%的识别率,比射击法高17.9%。此外,我们确认所提出的方法比传统方法实现更高速率匹配和更高的识别成功率。

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