论文标题
通过晶须朝着多维质感和分类
Towards Multidimensional Textural Perception and Classification Through Whisker
论文作者
论文摘要
基于纹理的研究和设计最近一直处于重点。文献中缺少基于晶须的多维表面纹理数据。该数据对于纹理表面的分类和回归中的机器人技术和机器感知算法至关重要。在这项研究中,我们提出了一种新型的传感器设计,以获取多维纹理信息。表面纹理的粗糙度和硬度是通过扫描和擦伤实验测量的。三种机器学习模型(SVM,RF和MLP)在表面纹理的粗糙度和硬度方面具有出色的分类精度。我们表明,使用晶须传感器从标准加工样品收集的压力和加速度计数据的组合提高了分类精度。此外,我们在实验上验证了传感器可以以低至$2.5μm$的粗糙度对纹理进行分类,准确度为$ 90 \%$或更多,并根据其粗糙度和硬度分离材料。我们提出了一个新颖的指标,可以在设计晶须传感器时考虑,以确保事先保证纹理数据的质量。机器学习模型性能是根据从激光传感器中从相同表面纹理中收集的数据验证的。作为我们工作的一部分,我们正在释放二维纹理数据:研究界的粗糙度和硬度。
Texture-based studies and designs have been in focus recently. Whisker-based multidimensional surface texture data is missing in the literature. This data is critical for robotics and machine perception algorithms in the classification and regression of textural surfaces. In this study, we present a novel sensor design to acquire multidimensional texture information. The surface texture's roughness and hardness were measured experimentally using sweeping and dabbing. Three machine learning models (SVM, RF, and MLP) showed excellent classification accuracy for the roughness and hardness of surface textures. We show that the combination of pressure and accelerometer data, collected from a standard machined specimen using the whisker sensor, improves classification accuracy. Further, we experimentally validate that the sensor can classify texture with roughness depths as low as $2.5μm$ at an accuracy of $90\%$ or more and segregate materials based on their roughness and hardness. We present a novel metric to consider while designing a whisker sensor to guarantee the quality of texture data acquisition beforehand. The machine learning model performance was validated against the data collected from the laser sensor from the same set of surface textures. As part of our work, we are releasing two-dimensional texture data: roughness and hardness to the research community.