1. Semantic Segmentation With Context Encoding and Multi-Path Decoding
- Author
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Xudong Jiang, Ai Qun Liu, Bing Shuai, Henghui Ding, Gang Wang, and School of Electrical and Electronic Engineering
- Subjects
Pixel ,Computer science ,business.industry ,Deep learning ,Context Encoding ,ComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISION ,Cognitive neuroscience of visual object recognition ,Pattern recognition ,02 engineering and technology ,Pascal (programming language) ,Computer Graphics and Computer-Aided Design ,Convolutional neural network ,Discriminative model ,Electrical and electronic engineering [Engineering] ,0202 electrical engineering, electronic engineering, information engineering ,Semantic Segmentation ,020201 artificial intelligence & image processing ,Segmentation ,Artificial intelligence ,business ,computer ,Software ,Decoding methods ,computer.programming_language - Abstract
Semantic image segmentation aims to classify every pixel of a scene image to one of many classes. It implicitly involves object recognition, localization, and boundary delineation. In this paper, we propose a segmentation network called CGBNet to enhance the paring results by context encoding and multi-path decoding. We first propose a context encoding module that generates context contrasted local feature to make use of the informative context and the discriminative local information. This context encoding module greatly improves the segmentation performance, especially for inconspicuous objects. Furthermore, we propose a scale-selection scheme to selectively fuse the parsing results from different-scales of features at every spatial position. It adaptively selects appropriate score maps from rich scales of features. To improve the parsing results of boundary, we further propose a boundary delineation module that encourages the location-specific very-low-level feature near the boundaries to take part in the final prediction and suppresses them far from the boundaries. Without bells and whistles, the proposed segmentation network achieves very competitive performance in terms of all three different evaluation metrics consistently on the four popular scene segmentation datasets, Pascal Context, SUN-RGBD, Sift Flow, and COCO Stuff, ADE20K, and Cityscapes. Ministry of Education (MOE) This work was jointly supported by Singapore Ministry of Education Academic Research Fund (AcRF) Tier 3 Grant no: MOE2017-T3-1-001, and Zhejiang Leading Innovation Research Program 2018R01017.
- Published
- 2020
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