Edwards J, Lawry J, Rossiter J, Melhuish C
Bristol Robotics Laboratory, Coldharbour Lane, Frenchay, Bristol BS16 1QY, UK.
Bioinspir Biomim. 2008 Sep;3(3):035002. doi: 10.1088/1748-3182/3/3/035002. Epub 2008 Jun 27.
This paper describes an experiment to quantify texture using an artificial finger equipped with a microphone to detect frictional sound. Using a microphone to record tribological data is a biologically inspired approach that emulates the Pacinian corpuscle. Artificial surfaces were created to constrain the subsequent analysis to specific textures. Recordings of the artificial surfaces were made to create a library of frictional sounds for data analysis. These recordings were mapped to the frequency domain using fast Fourier transforms for direct comparison, manipulation and quantifiable analysis. Numerical features such as modal frequency and average value were calculated to analyze the data and compared with attributes generated from principal component analysis (PCA). It was found that numerical features work well for highly constrained data but cannot classify multiple textural elements. PCA groups textures according to a natural similarity. Classification of the recordings using k nearest neighbors shows a high accuracy for PCA data. Clustering of the PCA data shows that similar discs are grouped together with few classification errors. In contrast, clustering of numerical features produces erroneous classification by splitting discs between clusters. The temperature of the finger is shown to have a direct relation to some of the features and subsequent data in PCA.
本文描述了一项实验,该实验使用配备麦克风的人工手指来检测摩擦声,从而对纹理进行量化。使用麦克风记录摩擦学数据是一种受生物启发的方法,它模仿了帕西尼小体。创建人工表面以便将后续分析限制在特定纹理上。对人工表面进行录音以创建用于数据分析的摩擦声库。使用快速傅里叶变换将这些录音映射到频域,以便进行直接比较、处理和可量化分析。计算模态频率和平均值等数值特征来分析数据,并与主成分分析(PCA)生成的属性进行比较。结果发现,数值特征对于高度受限的数据效果良好,但无法对多个纹理元素进行分类。PCA根据自然相似性对纹理进行分组。使用k近邻对录音进行分类显示,PCA数据的准确率很高。PCA数据的聚类表明,相似的圆盘被归为一组,分类错误很少。相比之下,数值特征的聚类会通过在不同聚类之间分割圆盘而产生错误分类。手指的温度与PCA中的一些特征和后续数据有直接关系。