| Literature DB >> 29558919 |
C Ladha1,2, Z Belshaw3, J O'Sullivan4, L Asher4.
Abstract
BACKGROUND: Accelerometer-based technologies could be useful in providing objective measures of canine ambulation, but most are either not tailored to the idiosyncrasies of canine gait, or, use un-validated or closed source approaches. The aim of this paper was to validate algorithms which could be applied to accelerometer data for i) counting the number of steps and ii) distance travelled by a dog. To count steps, an approach based on partitioning acceleration was used. This was applied to accelerometer data from 13 dogs which were walked a set distance and filmed. Each footfall captured on video was annotated. In a second experiment, an approach based on signal features was used to estimate distance travelled. This was applied to accelerometer data from 10 dogs with osteoarthritis during normal walks with their owners where GPS (Global Positioning System) was also captured. Pearson's correlations and Bland Altman statistics were used to compare i) the number of steps measured on video footage and predicted by the algorithm and ii) the distance travelled estimated by GPS and predicted by the algorithm.Entities:
Keywords: Accelerometer; Activity level; Dog; GPS; Motion analysis; Step counting
Mesh:
Year: 2018 PMID: 29558919 PMCID: PMC5861607 DOI: 10.1186/s12917-018-1422-3
Source DB: PubMed Journal: BMC Vet Res ISSN: 1746-6148 Impact factor: 2.741
Details of subjects, steps detected using algorithm applied to accelerometer signal, and counts detected from video footage
| ID | Height (cm) | Weight (kg) | Breed | Age | Sexa | Steps Counted Video | Steps Detected Algorithm |
|---|---|---|---|---|---|---|---|
| D.1 | 47.4 | 17.5 | Springer Spaniel | 9 | FN | 455 | 398 |
| D.2 | 51.5 | 27 | Mixed | 8 | FN | 351 | 309 |
| D.3 | 54 | 28.1 | Labrador | 5 | FN | 348 | 307 |
| D.4 | 50.5 | 28.2 | Mixed | 10 | FN | 313 | 274 |
| D.5 | 53.4 | 18.1 | Lurcher | 6 | MN | 311 | 269 |
| D.6 | 60.6 | 39 | Labrador | 2 | MI | 275 | 242 |
| D.7 | 45.8 | 11.3 | Lurcher | 1.9 | F | 323 | 293 |
| D.8 | 64.4 | 25 | Lurcher | 9 | MN | 331 | 305 |
| D.9 | 46.8 | 12 | Springer Spaniel/Collie | 5 | FN | 414 | 370 |
| D.10 | 84.9 | 64.0 | Irish Wolf hound | 5.5 | FN | 274 | 274 |
| D.11 | 38 | 11.8 | Corgi | 3.5 | FN | 491 | 455 |
| D.12 | 44.4 | 15 | Cocker Spaniel/Poodle | 2 | MN | 489 | 374 |
| D.13 | 61.5 | 38 | Rhodesian Ridgeback | 7 | FN | 320 | 281 |
For sex F Female, M Male, N neutered
Fig. 1Image of the course used for walking the dogs during step counting experiment. (Image reproduced with permission Google ©2017)
Fig. 2Photo of the accelerometer (a) and GPS sensor (b) alongside the collar used for collecting data
Fig. 3Flow diagram highlighting individual process stages of the algorithm for step counting
Fig. 4Illustration of approach used to find falling flank zero crossings and estimate step distance. Points marked are i) Amax, the peak acceleration observed in the dorsal-ventral axis; ii) (Amax - Amin) /2, the mean acceleration observed in the dorsal-ventral axis; iii) Amin, the minimum acceleration observed in the dorsal-ventral axis; iv) collar mounted accelerometer; v) falling flank zero-crossing; vi) “bounce” calculated as Amax-Amin; vii) accelerometer signal aligned with ventral axis of dog (after re-orientation, filtering and smoothing). The figure shows the half angle of the step (ϕ) can be estimated from the trigonometry based around the bounce between steps. Amax and Amin can be used in eq. (4) for calculating step distance
Details of subjects, Quantity (Qty) of usable walks, distance estimated using GPS and Distance estimated using an algorithm applied to an accelerometer signal. Each walk length is listed separated by a semicolon
| ID | qty Walks | Weight (kg) | Breed | Sexa | dist GPS (m) | dist Algorithm (m) |
|---|---|---|---|---|---|---|
| D1.1 | 2 | NA | Mixed | MN | 2590; 2430 | 3307;3355 |
| D1.2 | 3 | NA | Mixed | MN | 732; 878; 699 | 953;957;974 |
| D1.3 | 1 | NA | Mixed | FN | 577 | 712 |
| D1.4 | 2 | NA | Mixed | MN | 815;568 | 847;579 |
| D1.5 | 2 | 20 | Labrador | FN | 852;1310 | 609;812 |
| D1.6 | 1 | 13 | Toy Poodle | MN | 921 | 1446 |
| D1.7 | 1 | 17 | Springer Spaniel | FN | 1830 | 2853 |
| D1.8 | 1 | 34 | Rottweiler | FN | 776 | 851 |
| D1.9 | 1 | 15 | Collie | MN | 1330 | 1240 |
| D1.10 | 1 | 17 | Collie Cross | MN | 650 | 688 |
aFor sex F Female, M Male, N neutered
Fig. 5a Predicted steps from algorithm to counted steps from annotated video footage for each dog; b Estimated distance from algorithm to distance measured via GPS for each walk