| Literature DB >> 35898000 |
Cheng-Jian Lin1,2, Ta-Sen Wei3, Peng-Ta Liu3, Bing-Hong Chen1, Chi-Huang Shih1.
Abstract
In the context of behavior recognition, the emerging bed-exit monitoring system demands a rapid deployment in the ward to support mobility and personalization. Mobility means the system can be installed and removed as required without construction; personalization indicates human body tracking is limited to the bed region so that only the target is monitored. To satisfy the above-mentioned requirements, the behavior recognition system aims to: (1) operate in a small-size device, typically an embedded system; (2) process a series of images with narrow fields of view (NFV) to detect bed-related behaviors. In general, wide-range images are preferred to obtain a good recognition performance for diverse behaviors, while NFV images are used with abrupt activities and therefore fit single-purpose applications. This paper develops an NFV-based behavior recognition system with low complexity to realize a bed-exit monitoring application on embedded systems. To achieve effectiveness and low complexity, a queueing-based behavior classification is proposed to keep memories of object tracking information and a specific behavior can be identified from continuous object movement. The experimental results show that the developed system can recognize three bed behaviors, namely off bed, on bed and return, for NFV images with accuracy rates of 95~100%.Entities:
Keywords: bed exit; behavior recognition; images
Mesh:
Year: 2022 PMID: 35898000 PMCID: PMC9332029 DOI: 10.3390/s22155495
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.847
Figure 1Object (human body) tracking range.
Figure 2System prototype: (a) system with mobile stand; (b) camera capturing a horizontal view; (c) camera capturing a vertical view.
Figure 3Images with four angles: (a) horizontal high; (b) horizontal low; (c) vertical high; (d) vertical low.
Figure 4Status classification queueing system.
Figure 5Object detection with bounding box in pink (a–c) and green (d).
Figure 6Real−time trace of XY coordinates for the bounding box from the horizontal low angle: numbers (1)~(9) stand for different statuses; letters (A)~(C) represent detection failure events.
Figure 7Real−time trace of XY coordinates for the bounding box from the vertical low angle: numbers (1)~(9) stand for different statuses; letters (A) and (E)~(G) represent detection failure events; letters (B)~(D) represent scene change events.
Head and trunk detection results for different camera angles.
| Camera Angle | Object | TP | FP | A |
|---|---|---|---|---|
| Horizontal High | Head | 159 | 46 | 86% |
| Trunk | 103 | 5 | 93% | |
| Horizontal Low | Head | 149 | 48 | 85% |
| Trunk | 112 | 25 | 85% | |
| Vertical High | Head | 218 | 15 | 96% |
| Trunk | 67 | 20 | 85% | |
| Vertical Low | Head | 154 | 1 | 95% |
| Trunk | x | x | x | |
| Diagonal High | Head | 1817 | 2 | 99% |
| Trunk | 763 | 39 | 96% |
Figure 8Images from the diagonal high angle: (a) lay on the bed; (b) get up and turn around; (c) sit on the edge of bed; (d) exit the bed.
Object detection statistical results for different camera angles.
| Camera Angle | P | R | F1 | TP | FP | FN | mAP |
|---|---|---|---|---|---|---|---|
| Horizontal High | 84% | 85% | 85% | 262 | 51 | 45 | 90% |
| Horizontal Low | 84% | 85% | 82% | 261 | 73 | 45 | 88% |
| Vertical High | 89% | 92% | 90% | 285 | 37 | 24 | 90% |
| Vertical Low | 99% | 90% | 95% | 154 | 1 | 17 | 49% |
| Diagonal High | 98% | 98% | 98% | 2580 | 41 | 51 | 98% |
Figure 9Behavior index trace from the horizontal low angle: numbers (1)–(9) stand for different statuses; letters (A)–(C) represent detection failure events.
Behavior recognition statistical results for different NFV camera angles.
| Camera Angle | On Bed | Off Bed | Return |
|---|---|---|---|
| Horizontal High | 100% (40/40) | 100% (20/20) | 100% (20/20) |
| Horizontal Low | 100% (40/40) | 100% (20/20) | 100% (20/20) |
| Vertical High | 100% (40/40) | 100% (20/20) | 95% (19/20) |
| Vertical Low | 100% (40/40) | 100% (20/20) | 95% (19/20) |