Automated behavioural classification and identification through sensors has the potential to improve health and welfare of the animals. Position of a sensor, sampling frequency and window size of segmented signal data has a major impact on classification accuracy in activity recognition and energy needs for the sensor, yet, there are no studies in precision livestock farming that have evaluated the effect of all these factors simultaneously. The aim of this study was to evaluate the effects of position (ear and collar), sampling frequency (8, 16 and 32âHz) of a triaxial accelerometer and gyroscope sensor and window size (3, 5 and 7âs) on the classification of important behaviours in sheep such as lying, standing and walking. Behaviours were classified using a random forest approach with 44 feature characteristics. The best performance for walking, standing and lying classification in sheep (accuracy 95%, F-score 91%-97%) was obtained using combination of 32âHz, 7âs and 32âHz, 5âs for both ear and collar sensors, although, results obtained with 16âHz and 7âs window were comparable with accuracy of 91%-93% and F-score 88%-95%. Energy efficiency was best at a 7âs window. This suggests that sampling at 16âHz with 7âs window will offer benefits in a real-time behavioural monitoring system for sheep due to reduced energy needs.
Evaluation of sampling frequency, window size and sensor position for classification of sheep behaviour.
评估采样频率、窗口大小和传感器位置对绵羊行为分类的影响
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作者:Walton Emily, Casey Christy, Mitsch Jurgen, Vázquez-Diosdado Jorge A, Yan Juan, Dottorini Tania, Ellis Keith A, Winterlich Anthony, Kaler Jasmeet
| 期刊: | Royal Society Open Science | 影响因子: | 2.900 |
| 时间: | 2018 | 起止号: | 2018 Feb 7; 5(2):171442 |
| doi: | 10.1098/rsos.171442 | 种属: | Sheep |
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