| Literature DB >> 19660132 |
Jin Sun Ju1, Yunhee Shin, Eun Yi Kim.
Abstract
BACKGROUND: Due to the shift of the age structure in today's populations, the necessities for developing the devices or technologies to support them have been increasing. Traditionally, the wheelchair, including powered and manual ones, is the most popular and important rehabilitation/assistive device for the disabled and the elderly. However, it is still highly restricted especially for severely disabled. As a solution to this, the Intelligent Wheelchairs (IWs) have received considerable attention as mobility aids. The purpose of this work is to develop the IW interface for providing more convenient and efficient interface to the people the disability in their limbs.Entities:
Mesh:
Year: 2009 PMID: 19660132 PMCID: PMC2732630 DOI: 10.1186/1743-0003-6-33
Source DB: PubMed Journal: J Neuroeng Rehabil ISSN: 1743-0003 Impact factor: 4.262
Figure 1Intelligent Wheelchairs (IWs). (a) GRASP Laboratory Smart Chair [6], (b) Wheelchair of Yutaka et. al [3], (c) Nav Chair [14].
IW controls in literatures
| Y.L. Chen, et, al [ | Head orientation | tilt sensors, microprocessor | Go, back, left, right | ||
| SIAMO project [ | Eye gaze | Electrode | Go, Back, Left, Right | ||
| Wheelesley [ | Eye gaze | Infrared sensors, ultrasonic range sensors, electrodes (EOG) | Go, Stop, Back, Left, Right | ||
| Siamo project [ | Voice | ultrasonic sensors, infrared sensors, camera & laser diode | Go, Back, Left, Right | ||
| ROB Chair [ | Voice | infrared sensors, ultrasonic sensors, head microphone | Go, Stop, Speed up, Speed Down, Rotate | ||
| NAVChair [ | Voice | Dos-based computer, ultrasonic transducer, lap tray, sonar sensors | Go, Stop, Back, Left, Right | ||
| TAO project [ | Voice | sensors, 2 processor boxes | Go, Stop, Back, Left, Right, Speed Down | ||
| Yoshida, et, al [ | Face | ultrasonic sensors, 2 video camera | Go, Stop, Left, Right | ||
| HGI [ | Head & nose | webcam, ultrasonic sensors, data acquisition board | Go, Left, Right, Speed up, Speed Down | ||
| SIAMO [ | Head | CCD color-micro camera | Go, Left, Right, Speed up, Speed Down | ||
| Proposed IW | Face & Mouth | web camera, data acquisition board | Single commands: Go, Stop, Left, Right, Rotate | ||
Figure 2The prototype of our IW.
The specification of the proposed IW
| Wheelchair | EPW-DAESE M. care Rider | OS | MS Window XP |
| DAQ Board | Compile Technology SDQ-DA04EX | Developed Language | MS Visual C++, MS Visual Basic 6.0 |
| Input device | Logitech (640 × 480) Up to 30 frame/sec 24-Bit True Color | Camera Control | Open CV |
| Vision System | Pentium IV 1.7 GHz 1GB Memory | ||
| Sensors | Two ultrasonic sensors Six Infra-red sensors | ||
Figure 3The overall architecture of the proposed control system.
Figure 4Outline of face detection using Adaboost algorithm.
Figure 5Face Detection Results. (a) the results for MMI DB, (b) the results for VAK DB, (c) the results for online streaming data.
Figure 6The mouth detection results. (a) edge detection results, (b) noise removed results.
Figure 7The recognition results for face inclination. (a) the commands of turn-left, (b) the commands of turn-right.
Figure 8The mouth shape templates. (a) "Uhm" mouth shape templates and, (b) "Go" mouth shape templates.
Figure 9Data Acquisition board (SDQ-DA04EX).
Operation Volts of Intelligent Wheelchair
| 2.45 V~3.7 | 2.45 V | |
| 1.2 V~2.45 V | 2.45 V | |
| 2.45 V | 1.2 V~3.7 V | |
| 2.45 V | 2.45 V~3.7 V | |
| 2.45 V | 2.45 V | |
Testing Groups
| 17 | 0% | 100%(92%) | |
| 17 | 81% | 64%(23%) | |
Figure 10Face and mouth detection results.
Figure 11Face and mouth recognition results. (a) face inclination recognitions, (b) mouth shape recognitions.
Processing Time (.ms)
| 30 | 32 | |
| 15 | 18 | |
| 2 | 2 | |
| 15 | 16 | |
| 62 | 68 | |
Performance Evaluation Results
| 0.98 | 1 | |
| 0.94 | 1 | |
| 0.96 | 1 | |
| 0.98 | 1 | |
Figure 12IW controls on real environments.
Figure 13Intelligent Wheelchair input methods.
Test environments
| (Daytime, fixed illumination) | |
| (Nighttime, fixed illumination) | |
| (Daytime, time-varying illumination and a shadow) | |
| (Nighttime, -) | |
| (Daytime, time-varying illumination and shadow) | |
Figure 14Some examples of test maps. (a) Outdoor test map, (b) indoor test map.
Processing Time
| 48.31 s | |
| 48.61 s | |
| 51.23 s | |
Accuracy (%)
| 100 | 96.5 | |
| 89 | 88 | |
| 87 | 87.5 | |