DocumentCode :
3606184
Title :
Structural SVM with Partial Ranking for Activity Segmentation and Classification
Author :
Guopeng Zhang ; Piccardi, Massimo
Author_Institution :
Univ. of Technol. Sydney (UTS), Sydney, NSW, Australia
Volume :
22
Issue :
12
fYear :
2015
Firstpage :
2344
Lastpage :
2348
Abstract :
Structural SVM is an extension of the support vector machine for the joint prediction of structured labels from multiple measurements. Following a large margin principle, the training of structural SVM ensures that the ground-truth labeling of each sample receives a score higher than that of any other labeling. However, no specific score ranking is imposed among the other labelings. In this letter, we extend the standard constraint set of structural SVM with constraints between “almost-correct” labelings and less desirable ones to obtain a partial-ranking structural SVM (PR-SSVM) approach. Experimental results on action segmentation and classification with two challenging datasets (the TUM Kitchen mocap dataset and the CMU-MMAC video dataset) show that the proposed method achieves better detection and false alarm rates and higher F1 scores than both the conventional structural SVM and a comparable unstructured predictor. The proposed method also achieves higher accuracy than the state of the art on these datasets in excess of 14 and 31 percentage points, respectively.
Keywords :
image classification; image segmentation; set theory; support vector machines; CMU-MMAC video dataset; PR-SSVM approach; activity classification; activity segmentation; partial ranking; partial ranking structural SVM; score ranking; standard constraint set; structural SVM; support vector machine; Accuracy; Hidden Markov models; Joints; Labeling; Standards; Support vector machines; Training; Hamming loss; hidden Markov model; ranking; sequential labeling; structural SVM;
fLanguage :
English
Journal_Title :
Signal Processing Letters, IEEE
Publisher :
ieee
ISSN :
1070-9908
Type :
jour
DOI :
10.1109/LSP.2015.2480097
Filename :
7272085
Link To Document :
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