| Literature DB >> 29149080 |
Liang Zou1, Chang Ge2, Z Jane Wang3, Edmond Cretu4, Xiaoou Li5.
Abstract
During the last decades, smart tactile sensing systems based on different sensing techniques have been developed due to their high potential in industry and biomedical engineering. However, smart tactile sensing technologies and systems are still in their infancy, as many technological and system issues remain unresolved and require strong interdisciplinary efforts to address them. This paper provides an overview of smart tactile sensing systems, with a focus on signal processing technologies used to interpret the measured information from tactile sensors and/or sensors for other sensory modalities. The tactile sensing transduction and principles, fabrication and structures are also discussed with their merits and demerits. Finally, the challenges that tactile sensing technology needs to overcome are highlighted.Entities:
Keywords: machine learning; microfabrication; sensor fusion; smart tactile sensing
Mesh:
Year: 2017 PMID: 29149080 PMCID: PMC5713637 DOI: 10.3390/s17112653
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Trade-offs of different sensing principles.
| Sensing Principle | Trade-Offs | |
|---|---|---|
| Sensing Structure Related | Read out System Related | |
| Capacitive | High sensitivity and resolution | Highly integratable |
| Large dynamic measurement range | Medium complexity | |
| Static and dynamic measurement | Medium power consumption | |
| Easily affected by noise | High portability | |
| Piezo-resistive | High sensitivity and resolution | Highly integratable |
| Robust to noise | Highly Low complexity | |
| In-situ structured sensor | High portability | |
| Susceptible to hysteresis | High power consumption | |
| Piezoelectric | High sensitivity | Highly integratable |
| Large dynamic range | Medium complexity | |
| High frequency response | Medium portability, little bulky | |
| Low spatial resolution | Medium power consumption | |
| Optic | High sensitivity | Highly integrable |
| Large dynamic range | Medium complexity | |
| High frequency response | Medium power consumption | |
| High spatial resolution | Medium portability | |
Comparisons of tactile sensor material types.
| Material Type | Patterning | Properties | |
|---|---|---|---|
| Deposit | Etch | ||
| Silicic | High temperature | Highly dangerous chemical | Good mechanical properties |
| High vacuum requirement | Tunable electrical conductivity | ||
| Complex equipment | Complex equipment | Good thermal conductivity | |
| Low rate | Good optical properties | ||
| High chemical stability | |||
| Metallic | Flexible temperature | Flexible and simpler etching method | Good electrical conductivity |
| Flexible vacuum requirement | Good thermal conductivity | ||
| Medium equipment complexity | Simpler equipment | Medium chemical stability | |
| Medium rate | |||
| Polymer | Low temperature | Safe chemical | Medium to low mechanical properties |
| Low vacuum requirement | Insulator | ||
| High flexibility in functionalization | |||
| Simple equipment | High rate | Good optical properties | |
| High rate | Low chemical stability, prone to oxidation | ||
Figure 1Conventional tactile sensor fabrication technologies: (a) Micromachining, (b) Molding; and (c) (Reprinted with permission [33]. Copyright © 2014, Springer Berlin Heidelberg) and (d) (Reprinted with permission [24]. Copyright 2006, IEEE) examples of micromachined and modeled tactile sensing structures.
Fabrication methods for different types of tactile sensors.
| Capacitive | High | Medium | Low |
| Piezo-resistive | Medium | Medium | Low |
| Piezoelectric | Low | Medium | Low |
| Optic | Medium | Low | Low |
| Capacitive | Low | High | Low |
| Piezo-resistive | Medium | High | High |
| Piezoelectric | High | High | High |
| Optic | Medium | High | High |
Examples of existing tactile sensors for artificial skin.
| Reference | Characters | Function |
|---|---|---|
| [ | Pressure-sensitive, macroscale | Electronic skin capable of monitoring pressure with high spatial resolution |
| [ | Energy-Autonomous, Flexible, and Transparent, sensitive to touch | Mimic human skin and can perform task ranging from simple touching to grabbing of soft objects |
| [ | Ultra-lightweight, unbreakable and imperceptible | electronic skin, health care and monitoring and many others |
| [ | Flexible, self-powered, self-clean | multi-functional e-skin, such as elbow bending or finger pressing |
| [ | Unprecedented sensitivity for tactile pressure | Mimic human skin, with potential application in novel prosthetics and robotic surgery |
Figure 2Two examples of tactile sensing systems for biomedical engineering: (a) the modular prosthetic limb; and (b) the SureTouch sensor for breast exam [120,121] (Reprinted with permission. Copyright 2015 IEEE).
Figure 3The illustrative hierarchical transmission of tactile signals in: (a) human skin; and (b) smart tactile sensing system.
Figure 4An illustrative study in [149] showing the basic concept for artificial skin and a DNN architecture for reliable sensing: (a) a schematic elucidating the comparison between the human skin and the artificial skin; and (b) the DNN architecture for tactile sensing. (Reprinted with permission from the authors [149] under the terms and conditions of the Creative Commons Attribution license (http://creativecommons.org/licenses/by/4.0/)).
Some existing smart tactile sensing systems and the related machine learning techniques.
| Reference | Tactile Sensors (Hardware) | Extracted Features | Machine Learning Method | Aim |
|---|---|---|---|---|
| [ | BioTac (Pressure sensor) | Taction, roughness and fitness | Bayes | Texture classification |
| [ | Tactile sensor array | 226 features | Decision trees | Object identification |
| [ | Schunk Dexterous, Schunk Parallel and iCub hands | Spatio-Temporal structures by unsupervised feature learning | Support vector machine (SVM) | Grasp stability assessment and object recognition |
| [ | Macroscale electronic skin with a brilliant strain and position sensor | Features from electrical resistance change by DNN | Deep neural network (DNN) | Position recognition and pressure evaluation |
| [ | GelSight Tactile Sensor | Features from tactile images by DNN | Deep convolutional and recurrent neural network | Hardness Estimation |
| [ | Barometric pressure sensors | 34 “haptic adjectives” | Random Forests | Estimation of metabolic equivalent of tasks |
| [ | Humanoid robot, Cody, with force sensitive skin | Maximum force, contact area, and contact motion et al. | k-nearest neighbor (KNN) | Haptic classification and object recognition |
| [ | A tactile sensing system with spatially distributed PVDF sensors | Spatial and temporal features from tactile imaging | Kernel-based Extreme Learning Machines and SVM | Interpretation of Touch modality |