Learning adaptive receptive fields for deep image parsing networks
Abstract In this paper, we introduce a novel approach to automatically regulate receptive fields in deep image parsing networks. Unlike previous work which placed much importance on obtaining better receptive fields using manually selected dilated convolutional kernels, our approach uses two affine...
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2018-04-01
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Online Access: | http://link.springer.com/article/10.1007/s41095-018-0112-1 |
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doaj-c252550f8138423da906663944cf60f82020-11-25T02:09:25ZengSpringerOpenComputational Visual Media2096-04332096-06622018-04-014323124410.1007/s41095-018-0112-1Learning adaptive receptive fields for deep image parsing networksZhen Wei0Yao Sun1Junyu Lin2Si Liu3State Key Laboratory of Information Security, Institute of Information Engineering, Chinese Academy of SciencesState Key Laboratory of Information Security, Institute of Information Engineering, Chinese Academy of SciencesInstitute of Information Engineering, Chinese Academy of SciencesState Key Laboratory of Information Security, Institute of Information Engineering, Chinese Academy of SciencesAbstract In this paper, we introduce a novel approach to automatically regulate receptive fields in deep image parsing networks. Unlike previous work which placed much importance on obtaining better receptive fields using manually selected dilated convolutional kernels, our approach uses two affine transformation layers in the network’s backbone and operates on feature maps. Feature maps are inflated or shrunk by the new layer, thereby changing the receptive fields in the following layers. By use of end-to-end training, the whole framework is data-driven, without laborious manual intervention. The proposed method is generic across datasets and different tasks. We have conducted extensive experiments on both general image parsing tasks, and face parsing tasks as concrete examples, to demonstrate the method’s superior ability to regulate over manual designs.http://link.springer.com/article/10.1007/s41095-018-0112-1semantic segmentationreceptive fielddata-drivenface parsing |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Zhen Wei Yao Sun Junyu Lin Si Liu |
spellingShingle |
Zhen Wei Yao Sun Junyu Lin Si Liu Learning adaptive receptive fields for deep image parsing networks Computational Visual Media semantic segmentation receptive field data-driven face parsing |
author_facet |
Zhen Wei Yao Sun Junyu Lin Si Liu |
author_sort |
Zhen Wei |
title |
Learning adaptive receptive fields for deep image parsing networks |
title_short |
Learning adaptive receptive fields for deep image parsing networks |
title_full |
Learning adaptive receptive fields for deep image parsing networks |
title_fullStr |
Learning adaptive receptive fields for deep image parsing networks |
title_full_unstemmed |
Learning adaptive receptive fields for deep image parsing networks |
title_sort |
learning adaptive receptive fields for deep image parsing networks |
publisher |
SpringerOpen |
series |
Computational Visual Media |
issn |
2096-0433 2096-0662 |
publishDate |
2018-04-01 |
description |
Abstract In this paper, we introduce a novel approach to automatically regulate receptive fields in deep image parsing networks. Unlike previous work which placed much importance on obtaining better receptive fields using manually selected dilated convolutional kernels, our approach uses two affine transformation layers in the network’s backbone and operates on feature maps. Feature maps are inflated or shrunk by the new layer, thereby changing the receptive fields in the following layers. By use of end-to-end training, the whole framework is data-driven, without laborious manual intervention. The proposed method is generic across datasets and different tasks. We have conducted extensive experiments on both general image parsing tasks, and face parsing tasks as concrete examples, to demonstrate the method’s superior ability to regulate over manual designs. |
topic |
semantic segmentation receptive field data-driven face parsing |
url |
http://link.springer.com/article/10.1007/s41095-018-0112-1 |
work_keys_str_mv |
AT zhenwei learningadaptivereceptivefieldsfordeepimageparsingnetworks AT yaosun learningadaptivereceptivefieldsfordeepimageparsingnetworks AT junyulin learningadaptivereceptivefieldsfordeepimageparsingnetworks AT siliu learningadaptivereceptivefieldsfordeepimageparsingnetworks |
_version_ |
1724923910075449344 |