Three-Dimensional Posture Estimation of Vehicle Occupants Using Depth and Infrared Images
Abstract
:1. Introduction
- A novel training approach to train accurate posture estimation neural networks using solely IR and depth images;
- A method to reduce the amount of manually annotated samples required to train posture estimation networks, thereby reducing the costs and effort required to create posture-estimation datasets.
2. Related Work
3. Methodology
3.1. Problem Formulation
3.2. Data Collection
3.3. Domain-Aware Posture Estimation
3.4. Model Training Parameters and Hardware
4. Results
4.1. Results on Simulation Data
4.2. Results on Real Data
5. Conclusions and Scope for Extension
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
Appendix A.1. Per-Joint Average Error for Simulation Data
Joint | Average Train Error (cm) | Average Test Error (cm) |
---|---|---|
Pelvis | 0.84 | 0.88 |
Abdomen | 1.15 | 1.19 |
Thorax | 2.14 | 2.31 |
Neck | 1.98 | 2.97 |
Head | 2.78 | 3.72 |
Left Hip | 0.82 | 0.86 |
Left Knee | 4.85 | 5.23 |
Right Hip | 0.92 | 0.96 |
Right Knee | 6.29 | 6.41 |
Left Shoulder | 3.30 | 4.10 |
Left Elbow | 3.33 | 5.24 |
Left Wrist | 3.68 | 6.38 |
Right Shoulder | 3.32 | 4.37 |
Right Elbow | 3.48 | 5.14 |
Right Wrist | 3.50 | 5.87 |
Appendix A.2. Per-Joint Average Error on Real Data
Joint | OpenPose-Trained Model | Fine-Tuned Model |
---|---|---|
Pelvis | 0.06 | 0.04 |
Abdomen | 0.90 | 0.76 |
Thorax | 4.21 | 2.37 |
Neck | 16.60 | 6.17 |
Head | 15.62 | 7.37 |
Left Hip | 0.82 | 0.38 |
Left Knee | 11.41 | 7.99 |
Right Hip | 0.79 | 0.42 |
Right Knee | 12.93 | 8.89 |
Left Shoulder | 15.10 | 7.05 |
Left Elbow | 15.65 | 10.14 |
Left Wrist | 13.59 | 8.85 |
Right Shoulder | 11.82 | 6.84 |
Right Elbow | 14.77 | 7.65 |
Right Wrist | 15.98 | 9.19 |
Appendix A.3. Additional Examples of Predictions on Real Data
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Component | Type of Input Y | Z | Number of Data Points | Function |
---|---|---|---|---|
Simulated | Exact | 50,000 | Pre-training | |
Real | Approximate | 3000 | Fine-tuning | |
Real | Exact | 81 | Fine-tuning |
ID | Sex | Age | Stature | BMI | Sitting Height | Waist Circ. |
---|---|---|---|---|---|---|
1 | F | 21 | 1590 | 25.157 | 855 | 745 |
2 | F | 36 | 1530 | 25.610 | 836 | 832 |
3 | F | 30 | 1650 | 23.380 | 884 | 826 |
4 | M | 20 | 1698 | 22.580 | 909 | 775 |
5 | M | 28 | 1853 | 25.630 | 983 | 878 |
6 | F | 28 | 1607 | 38.684 | 910 | 786 |
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Tambwekar, A.; Park, B.-K.D.; Kusari, A.; Sun, W. Three-Dimensional Posture Estimation of Vehicle Occupants Using Depth and Infrared Images. Sensors 2024, 24, 5530. https://doi.org/10.3390/s24175530
Tambwekar A, Park B-KD, Kusari A, Sun W. Three-Dimensional Posture Estimation of Vehicle Occupants Using Depth and Infrared Images. Sensors. 2024; 24(17):5530. https://doi.org/10.3390/s24175530
Chicago/Turabian StyleTambwekar, Anuj, Byoung-Keon D. Park, Arpan Kusari, and Wenbo Sun. 2024. "Three-Dimensional Posture Estimation of Vehicle Occupants Using Depth and Infrared Images" Sensors 24, no. 17: 5530. https://doi.org/10.3390/s24175530
APA StyleTambwekar, A., Park, B. -K. D., Kusari, A., & Sun, W. (2024). Three-Dimensional Posture Estimation of Vehicle Occupants Using Depth and Infrared Images. Sensors, 24(17), 5530. https://doi.org/10.3390/s24175530