Title :
A Multigraph Representation for Improved Unsupervised/Semi-supervised Learning of Human Actions
Author :
Jones, Simon ; Ling Shao
Author_Institution :
Dept. of Electron. & Electr. Eng., Univ. of Sheffield, Sheffield, UK
Abstract :
Graph-based methods are a useful class of methods for improving the performance of unsupervised and semi-supervised machine learning tasks, such as clustering or information retrieval. However, the performance of existing graph-based methods is highly dependent on how well the affinity graph reflects the original data structure. We propose that multimedia such as images or videos consist of multiple separate components, and therefore more than one graph is required to fully capture the relationship between them. Accordingly, we present a new spectral method - the Feature Grouped Spectral Multigraph (FGSM) - which comprises the following steps. First, mutually independent subsets of the original feature space are generated through feature clustering. Secondly, a separate graph is generated from each feature subset. Finally, a spectral embedding is calculated on each graph, and the embeddings are scaled/aggregated into a single representation. Using this representation, a variety of experiments are performed on three learning tasks - clustering, retrieval and recognition - on human action datasets, demonstrating considerably better performance than the state-of-the-art.
Keywords :
graph theory; image representation; multimedia computing; pattern clustering; unsupervised learning; FGSM; affinity graph; feature clustering; feature grouped spectral multigraph; graph-based methods; information retrieval; multigraph representation; multimedia; semisupervised human action learning; semisupervised machine learning tasks; spectral embedding; unsupervised human action learning; unsupervised machine learning tasks; Accuracy; Clustering algorithms; Feature extraction; Histograms; Manifolds; Radio frequency; Videos; Clustering; Human Action Recognition; Manifold Learning; Multimedia Retrieval; Spectral Embedding; Unsupervised Learning;
Conference_Titel :
Computer Vision and Pattern Recognition (CVPR), 2014 IEEE Conference on
Conference_Location :
Columbus, OH
DOI :
10.1109/CVPR.2014.110