| Literature DB >> 29404692 |
Francesco Luke Siena1, Bill Byrom2, Paul Watts1, Philip Breedon3.
Abstract
Applications utilising 3D Camera technologies for the measurement of health outcomes in the health and wellness sector continues to expand. The Intel® RealSense™ is one of the leading 3D depth sensing cameras currently available on the market and aligns itself for use in many applications, including robotics, automation, and medical systems. One of the most prominent areas is the production of interactive solutions for rehabilitation which includes gait analysis and facial tracking. Advancements in depth camera technology has resulted in a noticeable increase in the integration of these technologies into portable platforms, suggesting significant future potential for pervasive in-clinic and field based health assessment solutions. This paper reviews the Intel RealSense technology's technical capabilities and discusses its application to clinical research and includes examples where the Intel RealSense camera range has been used for the measurement of health outcomes. This review supports the use of the technology to develop robust, objective movement and mobility-based endpoints to enable accurate tracking of the effects of treatment interventions in clinical trials.Entities:
Keywords: 3D Depth Camera; Clinical Trials; Health Outcomes; Intel® RealSense™; Motion Capture
Mesh:
Year: 2018 PMID: 29404692 PMCID: PMC5799357 DOI: 10.1007/s10916-018-0905-x
Source DB: PubMed Journal: J Med Syst ISSN: 0148-5598 Impact factor: 4.460
3D camera system properties for consideration when developing clinical research applications
| Property | Rationale |
|---|---|
| Field of vision | Field and depth of vision define the working area in which the tracking of patient movement can be achieved. The available working area will define the nature of performance tests that can be developed and measured using the camera system. For example, simple gait and walking tests will require sufficient depth / field of vision to ensure that at least a full gait cycle can be captured for a walking subject not attached to a treadmill. |
| Depth of vision | |
| Sample rate | Sample rate is an important consideration to ensure specific movements can be captured to the required level of granularity and precision. Simple performance tests such as measuring shoulder range of motion may not require high sample rates when tests are conducted slowly and only the final range of motion angle is required. However, tests in which rapid movements are conducted, such as the evaluation of movement from toe off to heel strike during walking will require higher sampling rates for accurate estimation. |
| Resolution | Higher resolution is important in the tracking and measurement of more detailed movement, such as facial analysis or hand joint movements. |
| Skeletal tracking | Accurate and reliable tracking of 3D joint coordinates is the basis for many rehabilitation and clinical research applications requiring the measurement of body movements and balance. |
| Facial tracking | Accurate 3D tracking of facial landmarks enables the tracking and measurement of a number of aspects of facial movement such as facial paralysis recovery after stroke / Bell’s palsy and assessment of stimulus-related expression in ADHD and autism spectrum disorders. |
| Hand and digit tracking | Tracking of hand and digit movement is important in performance tests of dexterity and potentially in the detection of gross tremor movements in conditions such as Parkinson’s disease. |
| Object recognition | Object recognition is an important component of accurate landmark tracking where estimates may be affected by the presence of additional objects within the field of vision. Object detection is used extensively with face detection and recognition (e.g., detection of glasses, piercings or facial hair), and in skeletal tracking (e.g., presence of a chair or walking support). |
Intel RealSense F200, R200 & SR300 Generic Feature Comparison [9]
| Intel RealSense F200 | Intel RealSense R200 | Intel RealSense SR300 | |
|---|---|---|---|
| RGB Camera (Pixel) | 1080p at 30 FPS | 1080p at 30 FPS | 1080p at 30 FPS, 720p at 60 FPS |
| Depth Camera (Pixel) | Up to 640 × 480 at 60 FPS (Fast VGA, VGA), HVGA at 110 FPS | 640 × 480 resolution at 60 FPS | Up to 640 × 480 at 60 FPS (Fast VGA, VGA), HVGA at 110 FPS |
| RGB Colour Field Of View | 43o,70o,77o | 77°×43°×70° | 41.5o,68o,75.2o |
| Infrared Field Of View | 59o,73o,90o | 70°×46°×59° | 55°×71.5°×88° |
| Approx. price (USD)* | 140 | 180 | 110 |
| SDK Status | Discontinued | Discontinued | SDK 2.0 Capable & Support Active (GitHub) |
| 3D Camera Features | |||
| Effective Range | 0.2 m – 1.2 m | 0.4 m to 2.8 m | 0.2 m – 1.2 m |
| Texture Mapping | Yes | Yes | Yes |
| World Mapping | Yes | Yes | Yes |
| Person Tracking | No | Yes | Yes |
Intel RealSense F200, R200 & SR300 Camera Algorithm Operating Ranges [11]
| Intel RealSense F200 | Intel RealSense R200 | Intel RealSense SR300 | |
|---|---|---|---|
| Facial Tracking | |||
| Detection | 30-100 cm | 55-250 cm | 30-100 cm |
| Landmark | 30-100 cm | 50-150 cm | 30-100 cm |
| Recognition | 30-80 cm | 30-150 cm | 30-150 cm |
| Expression | 30-100 cm | 30-100 cm | 30-100 cm |
| Pulse | 30-60 cm | 30-70 cm | 30-60 cm |
| Pose | 30-100 cm | 50-150 cm | 30-100 cm |
| Hand Tracking | |||
| Hand Segmentation | 20-80 (1 m/s) | NA | 20-110 (1.5 m/s) |
| Hand Tracking | 20-60 (0.75 m/s) | NA | 20-85 (1 m/s) |
| Hand Gesture Tracking | 20-60 (0.75 m/s) | NA | 20-85 (1 m/s) |
| Generic Tracking Features | |||
| Object Tracking | 30-180 cm | No | 30-180 cm |
| Person Detection | No | 70-350 cm | 50-250 cm |
| Person Tracking | No | 70-500 cm | 50-500 cm |
| Skeleton Tracking | No | 100-250 cm | 50-200 cm |
| Skeletal Joint Tracking * | No | Yes | Yes |
* Skeletal joint tracking no longer supported by Intel RealSense SDKs
Fig. 12D (RGB Camera) v 3D (Intel SR300 Camera) Tracking – Glasses
Fig. 22D (RGB Camera) v 3D (Intel SR300 Camera) Tracking – Tinted Glasses
Intel RealSense SR300, ZR300, D415 & D435 Generic Feature Comparison [14–16]
| IntelRealSense SR300 | Intel RealSense ZR300 | Intel RealSense D415 | IntelRealSense D435 | |
|---|---|---|---|---|
| RGB Camera (Pixel) | 1080p at 30 FPS, 720p at 60 FPS | 2MP, Up to 1080p @ 30 FPS | 1920 × 1080 at 30 FPS | 1920 × 1080 at 30 FPS |
| Depth Camera (Pixel) | Up to 640 × 480 at 60 FPS (Fast VGA, VGA), HVGA at 110 FPS | Up to 628 × 468 @ 60 fps | Up to 1280 × 720 at up to 90 FPS | Up to 1280 × 720 at up to 90 FPS |
| Depth Field of View (FOV) | 55°×71.5°×88° | 70° × 46° × 59° | 69.4°×42.5°×77° | 91.2°×65.5°×100.6° |
| RGB Colour Field Of View | 41.5ox68ox75.2o | 75° × 41.5° × 68° | 69.4°×42.5°×77° | 69.4°×42.5°×77° |
| Effective Depth Range | 0.2 m – 1.2 m | 0.5 – 3.5 m + | 0.3 – 10 m + | 0.2 – 10 m + |
| Typical Environment Of Use | Indoor | Indoor & Outdoor | Indoor & Outdoor | Indoor & Outdoor |
| Face Tracking & Recognition | Yes | Yes | Yes | Yes |
| Expression Recognition | Yes | Yes | Yes | Yes |
| Gesture Recognition | Yes | Yes | Yes | Yes |
| Hand Tracking | Yes | Yes | Yes | Yes |
| Approx. price (USD)* | 110 | 289 | 149 | 179 |
* Prices as of November 2017
Fig. 3Tracking the 3D position of 26 body joints using Microsoft Kinect