Title :
Human Activity Recognition for Physical Rehabilitation
Author :
Leightley, Daniel ; Darby, J. ; Baihua Li ; McPhee, Jamie S. ; Moi Hoon Yap
Author_Institution :
Sch. of Comput., Manchester Metropolitan Univ., Manchester, UK
Abstract :
The recognition of human activity is a challenging topic for machine learning. We present an analysis of Support Vector Machines (SVM) and Random Forests (RF) in their ability to accurately classify Kinect kinematic activities. Twenty participants were captured using the Microsoft Kinect performing ten physical rehabilitation activities. We extracted the kinematic location, velocity and energy of the skeletal joints at each frame of the activity to form a feature vector. Principle Component Analysis (PCA) was applied as a pre-processing step to reduce dimensionality and identify significant features amongst activity classes. SVM and RF are then trained on the PCA feature space to assess classification performance, we undertook an incremental increase in the dataset size. We analyse the classification accuracy, model training and classification time quantitatively at each incremental increase. The experimental results demonstrate that RF outperformed SVM in classification rate for six out of the ten activities. Although SVM has performance advantages in training time, RF would be more suited to real-time activity classification due to its low classification time and high classification accuracy when using eight to ten participants in the training set.
Keywords :
cameras; data reduction; feature extraction; image classification; image motion analysis; learning (artificial intelligence); medical image processing; patient rehabilitation; principal component analysis; support vector machines; Kinect kinematic activity classification; Microsoft Kinect; PCA feature space; RF; SVM; camera technology; classification performance assessment; classification time; dataset size; dimensionality reduction; feature vector; human activity recognition; kinematic location extraction; machine learning; model training; physical rehabilitation activity; principle component analysis; random forests; real-time activity classification; skeletal joints; support vector machine analysis; Accuracy; Joints; Kinematics; Principal component analysis; Radio frequency; Support vector machines; Training; Kinect; Machine Learning; Random Forests; Support Vector Machines;
Conference_Titel :
Systems, Man, and Cybernetics (SMC), 2013 IEEE International Conference on
Conference_Location :
Manchester
DOI :
10.1109/SMC.2013.51