Zeta hull pursuits: Learning nonconvex data hulls
Yuanjun Xiong, Wei Liu, et al.
NeurIPS 2014
Part deformation has been a longstanding challenge for object parsing, of which the primary difficulty lies in modeling the highly diverse object structures. To this end, we propose a novel structure parsing model to capture deformable object structures. The proposed model consists of two deformable layers: the top layer is an undirected graph that incorporates inter-part deformations to infer object structures; the base layer is consisted of various independent nodes to characterize local intra-part deformations. To learn this two-layer model, we design a layer-wise learning algorithm, which employs matching pursuit and belief propagation for a low computational complexity inference. Specifically, active basis sparse coding is leveraged to build the nodes at the base layer, while the edge weights are estimated by a structural support vector machine. Experimental results on two benchmark datasets (i.e., faces and horses) demonstrate that the proposed model yields superior parsing performance over state-of-the-art models.
Yuanjun Xiong, Wei Liu, et al.
NeurIPS 2014
Junchi Yan, Chao Zhang, et al.
CVPR 2015
Tadhg Fitzgerald, Yuri Malitsky, et al.
IJCAI 2015
Rongrong Ji, Yue Gao, et al.
ACM TIST