Object Localization based on Structural SVM using Privileged Information
Feyereisl, Jan, Kwak, Suha, Son, Jeany, Han, Bohyung
–Neural Information Processing Systems
We propose a structured prediction algorithm for object localization based on Support Vector Machines (SVMs) using privileged information. Privileged information provides useful high-level knowledge for image understanding and facilitates learning a reliable model even with a small number of training examples. In our setting, we assume that such information is available only at training time since it may be difficult to obtain from visual data accurately without human supervision. Our goal is to improve performance by incorporating privileged information into ordinary learning framework and adjusting model parameters for better generalization. We tackle object localization problem based on a novel structural SVM using privileged information, where an alternating loss-augmented inference procedure is employed to handle the term in the objective function corresponding to privileged information.
Neural Information Processing Systems
Feb-14-2020, 05:11:30 GMT
- Technology: