| Literature DB >> 31480467 |
Sang-Il Choi1, Jucheol Moon2, Hee-Chan Park1, Sang Tae Choi3.
Abstract
Recent studies indicate that individuals can be identified by their gait pattern. A number of sensors including vision, acceleration, and pressure have been used to capture humans' gait patterns, and a number of methods have been developed to recognize individuals from their gait pattern data. This study proposes a novel method of identifying individuals using null-space linear discriminant analysis on humans' gait pattern data. The gait pattern data consists of time series pressure and acceleration data measured from multi-modal sensors in a smart insole used while walking. We compare the identification accuracies from three sensing modalities, which are acceleration, pressure, and both in combination. Experimental results show that the proposed multi-modal features identify 14 participants with high accuracy over 95% from their gait pattern data of walking.Entities:
Keywords: gait analysis; linear discriminant analysis; multi-modal feature; multi-modal sensors; smart insole; user identification; wearable sensor
Mesh:
Year: 2019 PMID: 31480467 PMCID: PMC6749230 DOI: 10.3390/s19173785
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1Sensor structure of the smart insole, “FootLogger”.
Figure 2Preprocessing for gait pattern analysis.
Figure 3Procedure of the proposed method for user identification.
The total number of gait data samples according to the value of k with the number of training and test samples.
|
| Total Number of Gait Samples | Number of Training Sample | Number of Test Sample |
|---|---|---|---|
| 1 | 2295 | 42 | 658 |
| 2 | 1144 | 42 | 658 |
| 3 | 759 | 42 | 658 |
Figure 4Distribution of individual step samples in each vector space: (a) input space of pressure data, (b) input space of acceleration data, and (c) multi-modal feature space.
Figure 5Identification rates for various dimensions of the feature space.
Figure 6Identification rates for different k.