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Structured learning and detailed interpretation of minimal object images

Authors :
Ben-Yosef, Guy
Assif, Liav
Ullman, Shimon
Ben-Yosef, Guy
Assif, Liav
Ullman, Shimon
Publication Year :
2017

Abstract

We model the process of human full interpretation of object images, namely the ability to identify and localize all semantic features and parts that are recognized by human observers. The task is approached by dividing the interpretation of the complete object to the interpretation of multiple reduced but interpretable local regions. We model interpretation by a structured learning framework, in which there are primitive components and relations that play a useful role in local interpretation by humans. To identify useful components and relations used in the interpretation process, we consider the interpretation of minimal configurations, namely reduced local regions that are minimal in the sense that further reduction will turn them unrecognizable and uninterpretable. We show experimental results of our model, and results of predicting and testing relations that were useful to the model via transformed minimal images.<br />Comment: Accepted to Workshop on Mutual Benefits of Cognitive and Computer Vision, at the International Conference on Computer Vision. Venice, Italy, 2017

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1106281860
Document Type :
Electronic Resource