Analyzing Body Movements within the Laban Effort Framework Using a Single Accelerometer
نویسندگان
چکیده
This article presents a study on analyzing body movements by using a single accelerometer sensor. The investigated categories of body movements belong to the Laban Effort Framework: Strong-Light, Free-Bound and Sudden-Sustained. All body movements were represented by a set of activities used for data collection. The calculated accuracy of detecting the body movements was based on collecting data from a single wireless tri-axial accelerometer sensor. Ten healthy subjects collected data from three body locations (chest, wrist and thigh) simultaneously in order to analyze the locations comparatively. The data was then processed and analyzed using Machine Learning techniques. The wrist placement was found to be the best single location to record data for detecting Strong-Light body movements using the Random Forest classifier. The wrist placement was also the best location for classifying Bound-Free body movements using the SVM classifier. However, the data collected from the chest placement yielded the best results for detecting Sudden-Sustained body movements using the Random Forest classifier. The study shows that the choice of the accelerometer placement should depend on the targeted type of movement. In addition, the choice of the classifier when processing data should also depend on the chosen location and the target movement.
منابع مشابه
Laban Movement Analysis towards Behavior Patterns
This work presents a study about the use of Laban Movement Analysis (LMA) as a robust tool to describe human basic behavior patterns, to be applied in human-machine interaction. LMA is a language used to describe and annotate dancing movements and is divided in components [1]: Body, Space, Shape and Effort. Despite its general framework is widely used in physical and mental therapy [2], it has ...
متن کاملLaban Movement Analysis and Affective Movement Generation for Robots and Other Near-Living Creatures
This manuscript describes an approach, based on Laban Movement Analysis, to generate compact and informative representations of movement to facilitate affective movement recognition and generation for robots and other artificial embodiments. We hypothesize that Laban Movement Analysis, which is a comprehensive and systematic approach for describing movement, is an excellent candidate for derivi...
متن کاملMulti-Ocular Laban Movement Analysis of Emotional Characteristics
It is presented in the paper, a contribution to the field of human-machine interaction a system that has the ability to analyze emotional content of human movements, using as basis a technique known as Laban Movement Analysis. This work searches for computational approaches to quantify human qualities like emotion and expression and explores new functionalities towards implementation of more ad...
متن کاملUsing Motion Capture to Synthesize Dance Movements
Motion capture presents an interesting opportunity for the analysis and synthesis of movements in dance. We describe a tool that uses concatenative synthesis of dance movement based on a library of prerecorded basic movements. Dance movements are first broken into discrete, small movements following the guidelines of Laban dance notation. Then these movements can be performed by dancers and rec...
متن کاملA Worked-Out Experience in Programming Humanoid Robots via the Kinetography Laban
This chapter discusses the possibility of using Laban notation to program humanoid robots. Laban notation documents human movements by a sequence of symbols that express movements as defined in the physical space. We show, by reasoning around the simple action of “taking a ball”, the flexibility of the notation that is able to describe an action with different level of details, depending on the...
متن کامل