具有AG自注意的Lite权重语义分割

IF 1.5 4区 计算机科学 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE IET Computer Vision Pub Date : 2023-07-28 DOI:10.1049/cvi2.12225
Bing Liu, Yansheng Gao, Hai Li, Zhaohao Zhong, Hongwei Zhao
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引用次数: 0

摘要

由于语义分割的计算成本和 GPU 内存成本都很高,因此一些研究集中于设计一个轻量级模型,以便在计算成本和准确性之间实现良好的权衡。一种常见的方法是将 CNN 与视觉转换器相结合。然而,这些方法忽略了多感受野的上下文信息。而且现有的方法往往无法在多尺度特征的下采样中注入细节信息损失。为了解决这些问题,我们提出了 AG 自我注意(AG Self-Attention),即增强型自注意(Enhanced Atrous Self-Attention,EASA)和门注意(Gate Attention)。AG 自我注意将多感受野的上下文信息添加到全局语义特征中。具体来说,增强型无齿自注意使用不同无齿率的权重共享无齿卷积来获取特定不同感受野下的上下文信息。门注意(Gate Attention)引入了门机制,通过产生 "融合 "门和 "更新 "门,向全局语义特征注入详细信息并过滤详细信息。为了证明我们的见解。我们在常见的语义分割数据集(包括 ADE20 K、COCO-stuff、PASCAL Context 和 Cityscapes)中进行了大量实验,结果表明我们的方法达到了最先进的性能,并在计算成本和准确性之间实现了良好的权衡。
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Lite-weight semantic segmentation with AG self-attention

Due to the large computational and GPUs memory cost of semantic segmentation, some works focus on designing a lite weight model to achieve a good trade-off between computational cost and accuracy. A common method is to combined CNN and vision transformer. However, these methods ignore the contextual information of multi receptive fields. And existing methods often fail to inject detailed information losses in the downsampling of multi-scale feature. To fix these issues, we propose AG Self-Attention, which is Enhanced Atrous Self-Attention (EASA), and Gate Attention. AG Self-Attention adds the contextual information of multi receptive fields into the global semantic feature. Specifically, the Enhanced Atrous Self-Attention uses weight shared atrous convolution with different atrous rates to get the contextual information under the specific different receptive fields. Gate Attention introduces gating mechanism to inject detailed information into the global semantic feature and filter detailed information by producing “fusion” gate and “update” gate. In order to prove our insight. We conduct numerous experiments in common semantic segmentation datasets, consisting of ADE20 K, COCO-stuff, PASCAL Context, Cityscapes, to show that our method achieves state-of-the-art performance and achieve a good trade-off between computational cost and accuracy.

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来源期刊
IET Computer Vision
IET Computer Vision 工程技术-工程:电子与电气
CiteScore
3.30
自引率
11.80%
发文量
76
审稿时长
3.4 months
期刊介绍: IET Computer Vision seeks original research papers in a wide range of areas of computer vision. The vision of the journal is to publish the highest quality research work that is relevant and topical to the field, but not forgetting those works that aim to introduce new horizons and set the agenda for future avenues of research in computer vision. IET Computer Vision welcomes submissions on the following topics: Biologically and perceptually motivated approaches to low level vision (feature detection, etc.); Perceptual grouping and organisation Representation, analysis and matching of 2D and 3D shape Shape-from-X Object recognition Image understanding Learning with visual inputs Motion analysis and object tracking Multiview scene analysis Cognitive approaches in low, mid and high level vision Control in visual systems Colour, reflectance and light Statistical and probabilistic models Face and gesture Surveillance Biometrics and security Robotics Vehicle guidance Automatic model aquisition Medical image analysis and understanding Aerial scene analysis and remote sensing Deep learning models in computer vision Both methodological and applications orientated papers are welcome. Manuscripts submitted are expected to include a detailed and analytical review of the literature and state-of-the-art exposition of the original proposed research and its methodology, its thorough experimental evaluation, and last but not least, comparative evaluation against relevant and state-of-the-art methods. Submissions not abiding by these minimum requirements may be returned to authors without being sent to review. Special Issues Current Call for Papers: Computer Vision for Smart Cameras and Camera Networks - https://digital-library.theiet.org/files/IET_CVI_SC.pdf Computer Vision for the Creative Industries - https://digital-library.theiet.org/files/IET_CVI_CVCI.pdf
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