Inertial Sensor-Based Gait Recognition: A Review
<p>Detailed flowchart of a review process.</p> "> Figure 2
<p>Methodological layout of existing inertial sensor-based gait recognition approaches.</p> "> Figure 3
<p>Sensor positions.</p> "> Figure 4
<p>Number of papers in the area of inertial sensor-based gait recognition published in last decade (based on the references considered in review process).</p> ">
Abstract
:1. Introduction
2. Review Process
- How it is possible to recognise an user by the way he walks relying solely on data acquired by single inertial sensor, multiple inertial sensors or their fusion?
- What are the methodological constraints and how are they addressed?
- What are the physiological (gait-related) constraints and how are they addressed?
- How is the evaluation procedure performed and what is the relevance of the evaluation results?
- What is the performance and reliability of the most efficient approaches?
- What is the potential for the general use in realistic circumstances?
- What are the open problems and in which direction the further development is aimed?
3. Background
4. Methodology—A General Overview
4.1. Sensor Set-up and Data Acquisition
4.2. Preprocessing
Sensor Model | Sensor Configuration | Number of Sensors | Acceleration (Data for One Sensor) | Gyroscope (Data for One Sensor) | |||||
---|---|---|---|---|---|---|---|---|---|
Number of Measuring Axes | Range of Measurement | Sampling Rate | Number of Measuring Axes | Range of Measurement | Sampling Rate | ||||
Datasets used in compared approaches | |||||||||
Ngo et al., 2014 [27] | ZMP IMUZ, Kionix KXRF9 accelerometer | 3 evaluation boards, 1 smartphone Motorola ME860 | 3, 1 | 3, 3 | g | 100 Hz, 100 Hz | 3, 0 | ± 500 /s | 100 Hz |
Approaches | |||||||||
Trivino et al., 2010 [48] | Not provided | Stand-alone | 1 | 3 | Not provided | 10 Hz (constant) | |||
Ngo et al., 2011 [42] | MicroStrain 3DM-GX3-25 | Stand-alone | 1 | 3 | Not provided | 100 Hz (constant), resampled to 50 Hz | 3 | Not provided | 100 Hz (constant) |
H. Sun et al., 2012 [43] | ADXL345 | Stand-alone | 1 | 3 | Not provided | 50 Hz | |||
Derawi et al., 2013 [49] | Not provided | Smartphone Samsung Nexus S | 1 | 3 | g | 150 Hz (variable), resampled to 150 Hz using linear interpolation | |||
Frank et al., 2013 [44] | Not provided | Smartphone HTC Nexus One | 1 | 3 | Not provided | 28.5 Hz (variable), resampled to 25 Hz using linear interpolation | |||
Nickel et al., 2013 [50] | ST LIS331DLH | Smartphone Motorola Milestone | 1 | 3 | Not provided | 127.3 Hz (variable), resampled to 25, 50 and 100 Hz using linear interpolation | |||
Sama et al., 2013 [51] | ST LIS3LV02DQ | Stand-alone | 1 | 3 | Not provided | 200 Hz | |||
Ngo et al., 2014 [28] | ZMP IMUZ, MicroStrain 3DM-GX3-25 | Stand-alone | 3, 1 | 3, 3 | Not provided | 100 Hz, 100 Hz | |||
Ren et al., 2014 [52] | Not provided | Smartphone HTC EVO | 1 | 3 | Not provided | 50 Hz | |||
B. Sun et al., 2014 [53] | Not provided | Smartphone iPhone | 1, 1 | 3 | Not provided | Not provided | 3 | Not provided | Not provided |
Zhang et al., 2014 [29] | ADXL330 | Wii remote | 1 | 3 | g | 100 Hz | |||
Zhong et al., 2014 [45] | Relying on dataset of Ngo et al. [27] (experimental) and Frank et al. [44] (realistic). | ||||||||
Hoang et al., 2015 [54] | BMA-150 | Smartphone HTC Google Nexus One | 1 | 3 | g | 27 Hz, resampled using spline interpolation | |||
Sprager et al., 2015 [46] | Relying on dataset of Ngo et al. [27] (experimental) and Frank et al. [44] (realistic), resampled to 25 Hz in both cases. |
4.2.1. Filtering
4.2.2. Gait Detection and Activity Recognition
4.3. Segmentation
4.3.1. Cycle-Based Approaches
4.3.2. Frame-Based Approaches
4.4. Transformation to Gait Patterns
4.5. Recognition Procedure
4.6. Consideration of Gait-Affecting Factors
4.6.1. Sensor-Induced Factors
4.6.2. Variations in Gait Characteristics
4.7. Fusion Procedure
5. Comparative Analysis of the Representative Approaches
Approach | Sensor Data Used | Preprocessing | Consideration of Gait-Affecting Factors | Methodology | Decision Procedure | Special Remarks | |||
---|---|---|---|---|---|---|---|---|---|
Filtering and Normalization | Activity (Gait Sequence) Detection | Segmentation | Aligning | ||||||
Trivino et al., 2010 [48] | Acc. data in vertical and lateral direction | No filtering, z-score normalization | No | Covered by fusification model | No | No | Computational theory of perceptions | Pattern similarity: score derived from gait characteristics (homogenity, symmetry and the fourth root model) | |
Ngo et al., 2011 [42] | Gyr. data (all axes) | No | No | Phase-based cycle detection | Implicitly by time warping function | No | Phase registration supported by linearization of time warping function | Pattern similarity: normalised cumulative DTW score | |
H. Sun et al., 2012 [43] | Acc. data (all axes) | Low-pass Butterworth filter at 20 Hz | No | Cycle detection-based | Covered by curve aligning approach | No | Curve aligning | Axis-wise pattern similarity fusion based on DTW, correlation and curve aligning (SVM) | |
Derawi et al., 2013 [49] | Magnitude | Weighted moving average | No | Cycle detection: length estimation, peak analysis | Covered by time warping function | Orientation invariance by applying magnitude at the cost of information loss | Average cycle template | Pattern similarity: Manhattan distance (computation on phone side), Euclidean and DTW distance (computation on server side) | Computation on both smartphone and server side |
Frank et al., 2013 [44] | Magnitude | No | Sliding window approach (2 s), threshold on sum of absolute values | Fixed-length segments: width of 2 s and 5 s | No | No | Geometric template matching | Classification: random forest, 1-nearest neighbour | First reference for evaluation of recognition in realistic circumstances |
Nickel et al., 2013 [50] | Acc. data (all axes, magnitude) | Zero-normalization | No | Fixed-length segments: width of 2 s, 3 s and 4 s | No | No | Mel-frequency and bark-frequency cepstral coefficients | Classification: hidden Markov models, voting | |
Sama et al., 2013 [51] | Magnitude | No | No | Fixed-length segments: width of 1 to 10 s | No | No | Signal spectrum analysis (box approximation geometry) | Classification: SVM (Gaussian kernel) | |
Ngo et al., 2014 [28] | Acc. data (all axes) | No | No | No | Covered by signal registration | Orientation invariance | Orientation-compensative matching algorithm based on cyclic dynamic programming | Pattern similarity: dissimilarity by the rotation optimization function | First research that sufficiently addresses orientation problem |
B. Sun et al., 2014 [53] | Gyr. data (calibration phase), acc. data (recognition phase) | No | No | No | No | No | Gait characteristic parameters (gait frequency, symmetry coefficient, dynamic range, similarity coefficient of characteristic curves) | Weighted voting | Addresses sensor inaccuracies in smartphones |
Ren et al., 2014 [52] | Acc. data in vertical direction | No | No | Cycle detection based on a-priori knowledge employing Pearson’s CC | Cubic spline interpolation (300 samples) | Walking speed | Gait cycle template from acceleration trace | Weighted Pearson’s CC (computation on user side), SVM (computation on server side) | Computation on both smartphone and server side, includes placement study and spoofing attack study |
Zhang et al., 2014 [29] | Acc. data (all axes) | No | No | Covered by detection of signature points | No | No | Multiple signature points in scale | Classifier for sparse-code collection | |
Zhong et al., 2014 [45] | Acc. and gyr. Data (all axes) | No | No | Parameter-wise based on a-priori knowledge | No | Orientation invariance | Gait dynamic images | Cosine distance between i-vectors (GMM-based similarity estimation) | Robust to variations in sensor orientation |
Hoang et al., 2015 [54] | Acc. data (all axes) | Wavelet filtering (Db6) | No | Peak detection based on vertical acceleration, all cycles resampled to a fixed length | No | No | Biometric cryptosystem approach (fuzzy commitment scheme) | Hamming distance | Security and privacy preserved system (encrypted gait templates) |
Sprager et al., 2015 [46] | Acc. data (all axes, magnitude) | No | No | Fixed-length segment widths based on a-priori knowledge: 0.7 s, 1.4 s, and 2.8 s (experimental); 2.8 s, 4.2 s, 8.4 s and 12.6 s (realistic); variable signal lengths | No | No | Higher-order statistics | Normalized CC | Very short gait epochs, no segmentation or cycle detection needed, variable signal lengths |
5.1. Evaluation Datasets
Approach | Experiment Description | Length of Shortest Gait Epoch Used for Recognition | Validation | Performance | Special Remarks | ||||||
---|---|---|---|---|---|---|---|---|---|---|---|
Dataset Reference | Type of Validation | No. Subjects (M + F) | Protocol Description | Measurement Length | Gallery Data | Probe Data | Measure | Value | |||
Ngo et al., 2014 [27] | [27] | Experimental | 744 (389 + 355); 495 (IMUZ) and 408 (smartphone) | Two datasets including level- (9 m), up- and down-slope walk (3 m) | Short sequences, acquired by 1 min. long sessions | First level walk | Walk in opposite direction, slope walks | EER | Derawi et al. [62]: 14.3%, Rong et al. [41]: 14.3%, Gafurov et al. [63]: 15.8%, Ngo et al. [42] (gyroscope): 20.2% | Largest currently available IMU-based gait dataset, equal distribution of gender and age range | |
Trivino et al., 2010 [48] | [48] | Experimental | 11 | Each subject walked 20 trials with self-selected gait speed | 10 steps each trial | 10 steps | Leave-one-out cross-validation of each trial against the remaining trials | EER | 3% | ||
Ngo et al., 2011 [42] | [42] | Experimental | 32 (25 + 7) | Normal walk along an indoor corridor, 5 sequences for each subject carrying bag with weight increased on each trial | 2 min long trials (approx. 64 gait periods per trial) | Half of extracted gait cycles from each trial (approx. 1 min) | Half-half validation and leave-one-out validation for each scenario | EER | 6% | ||
H. Sun et al., 2012 [43] | [43] | Experimental | 22 (16 + 6) | Four trials for each subjects | 20 m long corridor | 4 gait patterns | Two-fold cross-validation | EER | 0.8% (fusion) 3% (non-fusion) | ||
Derawi et al., 2013 [49] | [49] | Partly realistic | 25 | 3 trials for each subject with 3 different walking speeds (slow, normal, fast) | 30 m long corridor | Whole collection of gait pattern in trial | 5 enrolled users, real-time evaluation based on gait of 25 users | Accuracy | 89.3%, p(FP) = 1.4% | ||
Frank et al., 2013 [44] | [44] | Realistic | 20 (10 + 10) | 2 measurements on different day with walking on the same trail on different surfaces, different clothing apply on each day of measurement for some subjects | 15 min | 2.8 s | Trials measured on first day | Trials measured on second day | Accuracy | 42% (TDEBOOST), 63% (applied label smoothing) | First realistic experiment |
Nickel et al., 2013 [50] | [50] | Realistic | 48 | Two phases: enrolment (shorter straight walk), authentication (long walk inside building on predefined route) | 10 s (enrollment), longer walk (authentication) | 4 s (best result) | Data from enrolment phase | Data from authentication phase | EER | 15.8% | |
Sama et al., 2013 [51] | [51] | Experimental | 20 | Walking with normal speed, 2 trials on the same day, sensor reinstalled between measurements | 20 m long corridor | 7 s (best result) | First trial | Second trial | Accuracy | 96.4% |
Approach | Experiment Description | Length of Shortest Gait Epoch Used for Recognition | Validation | Performance | Special Remarks | ||||||
---|---|---|---|---|---|---|---|---|---|---|---|
Dataset Reference | Type of Validation | No. Subjects (M + F) | Protocol Description | Measurement Length | Gallery Data | Probe Data | Measure | Value | |||
Ngo et al., 2014 [28] | [28] | Experimental | 47 (32 + 15) | 16 trials per subject: two days, 2 weights, 4 sensors | Each trial 2 min, about 64 gait periods, 90 m long walking path | Data acquired on first day (by 3DM-GX3-25 sensor) | Data acquired on second day (from all sensors) | EER | 10% | ||
B. Sun et al., 2014 [53] | [53] | Partly realistic | 10 | Straight walk on two surfaces: pavement and grass, 40 sets of data for each subject | Each trial 10 s (9–10 gait cycles) | 10 s | One set of data for one subject | Remaining 3 sets of data | Accuracy | All correct | |
Ren et al., 2014 [52] | [52] | Realistic | 26 | Casual walking of users, 3048 trials in half year, 2 types of trials: short and long; experiment included gait speed variations as well as spoofing scenario (8 adversary and 10 spoofing users) | Long trials: about 10 min; short trials: 10, 20 and 40 s (detection latency, walking speed and placement studies) | 20 s for stable accuracy | Several gallery and probe pools for different evaluation phases | Accuracy, FRR | Accuracy over 80% (user-side), over 90% (server side), FP rate under 10% | Includes important studies: step cycle identification, detection latency, walking speed, placement and possibility of spoofing | |
Zhang et al., 2014 [29] | [29] | Experimental | 175 (153 in seasons S1 and S2, 22 in one season S0) | 2 recording seasons on level walk, 6 trials per subject in one season, 1 week–0.5 year time interval between two seasons | 20 m straight level walk, 7–15 s for single trial (7-14 gait cycles) | 7–15 s | Identification: S1 or S2 for enrolment (as well as S0), remaining for identification; authentcation: S1 and S2 into threefolds, multiple targets per fold and probes per target (exhaustive protocol | EER (authentication), accuracy (identification) | 95.8% accuracy for identification, 2.2% EER for authentication | Exhaustive evaluation, data acquired from multiple sensors simultaneously | |
Zhong et al., 2014 [45] | [27,44] | Experimental ([27]), realistic ([44]) | * | * | * | Entire signals | * | * | EER (experimental), accuracy (realistic) | Experimental: 6.8% EER (accelerometer), 10.9% EER (gyrometer), 5.6% EER (fused); realistic: 66.3% accuracy | |
Hoang et al., 2015 [54] | [78] | Partly realistic | 38 (28 + 10) | Acquisition of 16 gait templates, each gait template consists of 4 consecutive gait cycles | At least 64 steps to generate 16 gait templates | 8 random gait templates | Half-half random selection of gait templates | EER, FAR, FRR | 0%, 16.2%, 3.5% | ||
Sprager et al., 2015 [46] | [27,44] | Experimental ([27]), realistic ([44]) | * | * | * | 1.4 s (both experimental cases), 12 s (realistic) | * | * | EER (experimental), accuracy (realistic) | Experimental, single sensor: 10.1% EER, sensor fusion: 5.5% EER; realistic: 69.4% accuracy | Experiment on very short gait epochs, variable epoch length |
5.2. Performance Evaluation
6. Analysis of Impacts
6.1. Performance
6.2. Uniqueness and Permanence of Gait Patterns
6.3. Collectability
6.4. Applicability in Practice
6.5. Security Implications
7. Conclusions and Outlook
Conflicts of Interest
References
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Sprager, S.; Juric, M.B. Inertial Sensor-Based Gait Recognition: A Review. Sensors 2015, 15, 22089-22127. https://doi.org/10.3390/s150922089
Sprager S, Juric MB. Inertial Sensor-Based Gait Recognition: A Review. Sensors. 2015; 15(9):22089-22127. https://doi.org/10.3390/s150922089
Chicago/Turabian StyleSprager, Sebastijan, and Matjaz B. Juric. 2015. "Inertial Sensor-Based Gait Recognition: A Review" Sensors 15, no. 9: 22089-22127. https://doi.org/10.3390/s150922089
APA StyleSprager, S., & Juric, M. B. (2015). Inertial Sensor-Based Gait Recognition: A Review. Sensors, 15(9), 22089-22127. https://doi.org/10.3390/s150922089