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Low-Cost Sensor Fusion Technique for Surface Roughness Discrimination With Optical and Piezoelectric Sensors

机译:用于光学和压电传感器的表面粗糙度鉴别的低成本传感器融合技术

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摘要

Surface roughness is one of the critical properties of an object. The capabilities of tactile sensors based on various working mechanisms were demonstrated to discriminate surface roughness. In our previous work, we showed that a biomimetic fingertip with piezoelectric sensors was effective in recognizing rough surfaces (Ra > 1 μm) but performed poorly if the surface roughness value was small (Ra <; 1 μm). Given the advantage of optical sensor in measuring fine surfaces, in this paper, we make an attempt to incorporate optical sensor together with the piezoelectric tactile sensors to recognize surface roughness. Specifically, we present two sensor fusion approaches, including feature-level fusion and decision-level fusion for surface roughness discrimination. Experimental results show that both fusion methods can improve the recognition performance, i.e., the highest classification accuracy of 99.88% and 98.83% can be obtained with decision-level fusion and feature-level fusion, respectively.
机译:表面粗糙度是物体的关键特性之一。事实证明,基于各种工作机制的触觉传感器能够区分表面粗糙度。在我们以前的工作中,我们显示了带有压电传感器的仿生指尖可以有效识别粗糙表面(Ra> 1μm),但是如果表面粗糙度值较小(Ra <; 1μm),则效果较差。考虑到光学传感器在测量精细表面方面的优势,在本文中,我们尝试将光学传感器与压电式触觉传感器结合在一起以识别表面粗糙度。具体来说,我们提出了两种传感器融合方法,包括用于表面粗糙度识别的特征级融合和决策级融合。实验结果表明,两种融合方法均可以提高识别性能,即决策级融合和特征级融合分别可以达到99.88%和98.83%的最高分类精度。

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