Learning two-pathway convolutional neural networks for categorizing scene images

Scenes are closely related to the kinds of objects that may appear in them. Objects are widely used as features for scene categorization. On the other hand, landscapes with more spatial structures of scenes are representative of scene categories. In this paper, we propose a deep learning based algor...

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Veröffentlicht in:Multimedia tools and applications 2017-08, Vol.76 (15), p.16145-16162
Hauptverfasser: Bai, Shuang, Li, Zhaohong, Hou, Jianjun
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container_title Multimedia tools and applications
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creator Bai, Shuang
Li, Zhaohong
Hou, Jianjun
description Scenes are closely related to the kinds of objects that may appear in them. Objects are widely used as features for scene categorization. On the other hand, landscapes with more spatial structures of scenes are representative of scene categories. In this paper, we propose a deep learning based algorithm for scene categorization. Specifically, we design two-pathway convolutional neural networks for exploiting both object attributes and spatial structures of scene images. Different from conventional deep learning methods, which usually focus on only one aspect of images, each pathway of the proposed architecture is tuned to capture a different aspect of images. As a result, complementary information of image contents can be utilized effectively. In addition, to deal with the feature redundancy problem caused by combining features from different sources, we adopt the ℓ 2,1 norm during classifier training to control selectivity of each type of features. Extensive experiments are conducted to evaluate the proposed method. Obtained results demonstrate that the proposed approach achieves superior performances over conventional methods. Moreover, the proposed method is a general framework, which can be easily extended to more pathways and applied to solve other problems.
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subjects Categories
Classification
Computer architecture
Computer Communication Networks
Computer Science
Data Structures and Information Theory
Deep learning
Landscape
Machine learning
Multimedia Information Systems
Neural networks
Redundancy
Selectivity
Special Purpose and Application-Based Systems
title Learning two-pathway convolutional neural networks for categorizing scene images
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