Horseback riding is a sport enjoyed by people around the world. Many riders are interested in knowing exactly how much they have exercised their horse and how much time that have been spent in different gaits. The goal of this master's thesis was to develop an equine gait recognition algorithm. Triaxial accelerometer and gyroscope signals were collected during different riding sessions by using smartphones. Features, used in previous activity recognition works, were implemented and calculated for all sensor signals. Different methods to select important features were used and the feature sets were then evaluated. In the work four classifiers were implemented and evaluated. The work resulted in an equine gait recognition algorithm based on s...
In this study, we classify four horse gaits (walk, sitting trot, rising trot, canter) of three breed...
For gait classification, hoof-on and hoof-off events are fundamental locomotion characteristics of i...
This paper presents the preliminary investigation of the use of radar signatures to detect and asse...
Automated gait classification has traditionally been studied using horse-mounted sensors. However, s...
Horseback riding is enjoyed by millions of people worldwide, both as a competitive sport and as recr...
For centuries humans have been fascinated by the natural beauty of horses in motion and their differ...
For gait classification, hoof-on and hoof-off events are fundamental locomotion characteristics of i...
Biomechanical analysis of racehorses is important in quantifying and maintaining performance. Early ...
Monitoring horse activity continually is a valuable aid for horse caretakers to provide recommendati...
Analyzing equestrian show jumping and dressage training movements can be greatly useful during train...
We describe and analyze a dataset that comprises horse movement. Data was collected during horse rid...
Equine training activity detection will help to track and enhance the performance and fitness level ...
Detection of hoof-on and -off events are essential to gait classification in horses. Wearable sensor...
In this study, we classify four horse gaits (walk, sitting trot, rising trot, canter) of three breed...
For gait classification, hoof-on and hoof-off events are fundamental locomotion characteristics of i...
This paper presents the preliminary investigation of the use of radar signatures to detect and asse...
Automated gait classification has traditionally been studied using horse-mounted sensors. However, s...
Horseback riding is enjoyed by millions of people worldwide, both as a competitive sport and as recr...
For centuries humans have been fascinated by the natural beauty of horses in motion and their differ...
For gait classification, hoof-on and hoof-off events are fundamental locomotion characteristics of i...
Biomechanical analysis of racehorses is important in quantifying and maintaining performance. Early ...
Monitoring horse activity continually is a valuable aid for horse caretakers to provide recommendati...
Analyzing equestrian show jumping and dressage training movements can be greatly useful during train...
We describe and analyze a dataset that comprises horse movement. Data was collected during horse rid...
Equine training activity detection will help to track and enhance the performance and fitness level ...
Detection of hoof-on and -off events are essential to gait classification in horses. Wearable sensor...
In this study, we classify four horse gaits (walk, sitting trot, rising trot, canter) of three breed...
For gait classification, hoof-on and hoof-off events are fundamental locomotion characteristics of i...
This paper presents the preliminary investigation of the use of radar signatures to detect and asse...