Title
Learning Hierarchical Feature Representation In Depth Image
Abstract
This paper presents a novel descriptor, geodesic invariant feature (GIF), for representing objects in depth images. Especially in the context of parts classification of articulated objects, it is capable of encoding the invariance of local structures effectively and efficiently. The contributions of this paper lie in our multi-level feature extraction hierarchy. (1) Low-level feature encodes the invariance to articulation. Geodesic gradient is introduced, which is covariant with the non-rigid deformation of objects and is utilized to rectify the feature extraction process. (2) Mid-level feature reduces the noise and improves the efficiency. With unsupervised clustering, the primitives of objects are changed from pixels to superpixels. The benefit is two-fold: firstly, superpixel reduces the effect of the noise introduced by depth sensors; secondly, the processing speed can be improved by a big margin. (3) High-level feature captures nonlinear dependencies between the dimensions. Deep network is utilized to discover the high-level feature representation. As the feature propagates towards the deeper layers of the network, the ability of the feature capturing the data's underlying regularities is improved. Comparisons with the state-of-the-art methods reveal the superiority of the proposed method.
Year
DOI
Venue
2014
10.1007/978-3-319-16811-1_39
COMPUTER VISION - ACCV 2014, PT III
Field
DocType
Volume
Computer vision,Invariant (physics),Covariant transformation,Pattern recognition,Computer science,Feature extraction,Pixel,Artificial intelligence,Deep learning,Cluster analysis,Geodesic,Encoding (memory)
Conference
9005
ISSN
Citations 
PageRank 
0302-9743
0
0.34
References 
Authors
0
4
Name
Order
Citations
PageRank
Yazhou Liu110312.04
Pongsak Lasang2165.29
Quansen Sun3122283.09
Mel Siegel428280.67