TY - JOUR
T1 - Real-time classification of variable length multi-attribute motions
AU - Li, Chuanjun
AU - Khan, Latifur
AU - Prabhakaran, Balakrishnan
PY - 2006/8
Y1 - 2006/8
N2 - Multi-attribute motion data can be generated in many applications/ devices, such as motion capture devices and animations. It can have dozens of attributes, thousands of rows, and even similar motions can have different durations and different speeds at corresponding parts. There are no row-to-row correspondences between data matrices of two motions. To be classified and recognized, multi-attribute motion data of different lengths are reduced to feature vectors by using the properties of singular value decomposition (SVD) of motion data. The reduced feature vectors of similar motions are close to each other, while reduced feature vectors are different from each other if their motions are different. By applying support vector machines (SVM) to the feature vectors, we efficiently classify and recognize real-world multi-attribute motion data. With our data set of more than 300 motions with different lengths and variations, SVM outperforms classification by related similarity measures, in terms of accuracy and CPU time. The performance of our approach shows its feasibility of real-time applications to real-world data.
AB - Multi-attribute motion data can be generated in many applications/ devices, such as motion capture devices and animations. It can have dozens of attributes, thousands of rows, and even similar motions can have different durations and different speeds at corresponding parts. There are no row-to-row correspondences between data matrices of two motions. To be classified and recognized, multi-attribute motion data of different lengths are reduced to feature vectors by using the properties of singular value decomposition (SVD) of motion data. The reduced feature vectors of similar motions are close to each other, while reduced feature vectors are different from each other if their motions are different. By applying support vector machines (SVM) to the feature vectors, we efficiently classify and recognize real-world multi-attribute motion data. With our data set of more than 300 motions with different lengths and variations, SVM outperforms classification by related similarity measures, in terms of accuracy and CPU time. The performance of our approach shows its feasibility of real-time applications to real-world data.
KW - Classification
KW - Multi-attribute motion
KW - Pattern recognition
KW - Singular value decomposition
KW - Support vector machines
UR - http://www.scopus.com/inward/record.url?scp=33747153041&partnerID=8YFLogxK
U2 - 10.1007/s10115-005-0223-8
DO - 10.1007/s10115-005-0223-8
M3 - Article
AN - SCOPUS:33747153041
SN - 0219-1377
VL - 10
SP - 163
EP - 183
JO - Knowledge and Information Systems
JF - Knowledge and Information Systems
IS - 2
ER -