| Literature DB >> 34248483 |
Wei Tang1, Meimei Zhang1, Guofang Chen2, Rui Liu1, Yuxing Peng1, Si Chen3, Yibing Shi2, Chunai Hu2, Shengjie Bai2.
Abstract
The triangular ridged surface can improve the grip reliability of products, but the sharp edge of triangular ridge induces sharp and uncomfortable feeling. To study the effect of edge shape (sharp, round, and flat shape) of triangular ridges on brain activity during touching, electroencephalograph (EEG) signals during tactile perception were evaluated using event-related potentials (ERP) and non-linear analysis methods. The results showed that the early component of P100 and P200, and the late component of P300 were successfully induced during perceiving the ridged texture. The edge shape features affect the electrical activity of brain during the tactile perceptions. The sharp shape feature evoked fast P100 latency and high P100 amplitude. The flat texture with complex (sharp and flat) shape feature evoked fast P200 latency, high P200 amplitude and RQA parameters. Both of the sharp shape and complex shape feature tended to evoke high peak amplitude of P300. The large-scale structures of recurrence plots (RPs) and recurrence quantification analysis (RQA) parameters can visually and quantitatively characterize the evolution regulation of the dynamic behavior of EEG system along with the tactile process. This study proved that RPs and RQA were protential methods for the feature extraction and state recognition of EEG during tactile perception of textured surface. This research contributes to optimize surface tactile characteristics on products, especially effective surface textures design for good grip.Entities:
Keywords: ERP components; recurrence plots; recurrence quantification analysis; ridged texture; tactile perception
Year: 2021 PMID: 34248483 PMCID: PMC8264067 DOI: 10.3389/fnins.2021.676837
Source DB: PubMed Journal: Front Neurosci ISSN: 1662-453X Impact factor: 4.677
FIGURE 1Structure schematic diagram of test bed.
FIGURE 2Samples with ridged textures of (A) sharp shape, (B) round shape, (C) flat shape, and (D) smooth sample.
Test groups.
| Group 1 | Smooth | Sharp shape |
| Group 2 | Smooth | Round shape |
| Group 3 | Smooth | Flat shape |
FIGURE 3Electrode distribution pattern.
Shape features of ridge element.
| Angle of edge | 90° | – | 135° | – |
| Radius of edge | – | 2 mm | – | – |
| Flat length | – | – | 4 mm | 7.5 mm |
FIGURE 4Average ERP scalp maps of three shapes of texture samples from 0 to 600 ms.
FIGURE 5Average ERP waveform of (A) C3, CP1, and P3 electrodes located in the left hemisphere, (B) C4, CP2, and P4 located in the right hemisphere, and (C) CZ and PZ located in the middle hemisphere. The purple, green, and red circle corresponded to the P100, P200, and P300 peak, respectively.
Summary of the latency and amplitude of ERP components.
| Sharp shape | 67b/4.3b | 192a/6.9a | 299b/10.6a |
| Round shape | 80a/2.4a | 195a/6.7a | 264a/7.5b |
| Flat shape | 86a/2.8a | 179b/8.5b | 274a/11.2a |
| 0.002/0 | 0.023/0 | 0/0 | |
FIGURE 6Recurrence plots of ERP signals stimulated by three samples.
FIGURE 7Parameters of recurrence quantification analysis. (1) – 400–0 ms, (2) 0–500 ms, (3) 500–1000 ms, and (4) 1000–1600 ms.