Associate Professor
Supervisor of Master's Candidates
Title of Paper:Salient Object Detection via Multiple Instance Learning
Hits:
Date of Publication:2017-04-01
Journal:IEEE TRANSACTIONS ON IMAGE PROCESSING
Included Journals:SCIE、EI
Volume:26
Issue:4
Page Number:1911-1922
ISSN No.:1057-7149
Key Words:Saliency detection; multiple instance learning; object proposal; optimization mechanism
Abstract:Object proposals are a series of candidate segments containing the objects of interest, which are taken as preprocessing and widely applied in various vision tasks. However, most of existing saliency approaches only utilizes the proposals to compute a location prior. In this paper, we naturally take the proposals as the bags of instances of multiple instances learning (MIL), where the instances are the superpixels contained in the proposals, and formulate saliency detection problem as an MIL task (i.e., predict the labels of instances using the classifier in the MIL framework). This method allows some flexibility in finding a decision boundary based on the bag-level representations and can identify salient superpixels from ambiguous proposals. In addition, we introduce the MIL to an optimization mechanism, which iteratively updates training bags from easy to complex ones to learn a strong model. The significant improvement can be consistently achieved when applying the optimization model to existing saliency approaches. Extensive experiments demonstrate that the proposed algorithms perform favorably against the stateof- art saliency detection methods on several benchmark data sets.
Open time:..
The Last Update Time: ..