Lightweight Bilateral Network for Real-Time Semantic Segmentation

IF 0.7 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Pengtao Wang, Lihong Li, Feiyang Pan, L. Wang
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引用次数: 0

Abstract

Herein, a dual-branch semantic segmentation model based on depth-separable convolution and attention mechanism is proposed for the real-time and accuracy requirement of semantic segmentation. The proposed approach overcomes the problems of poor segmentation effect and over-simplification of feature fusion arising from the constant downsample operations in semantic segmentation. The network is divided into spatial detail and semantic information paths. The spatial detail path utilizes a smaller downsample multiplier to maintain resolution and efficiently extract spatial information. The semantic information path is constructed by a non-bottleneck residual unit with dilated convolution; it extracts semantic features. For the feature aggregation problem, the feature-guided fusion module is designed to assign different weights to the parts of the two paths and fuse them to obtain the final output. The proposed algorithm achieves a segmentation accuracy of 69.6% and speed of 70 fps on the Cityscapes dataset, with a model parameter count of only 0.76 M, thus indicating some advantages over recent real-time semantic segmentation algorithms. The proposed method with depth separable convolution and attention mechanism can effectively extract features and compensate for the loss of accuracy caused by downsampling. The experiments demonstrate that the proposed fusion module outperforms other methods in fusing different features.
用于实时语义分割的轻量级双边网络
针对语义切分的实时性和准确性要求,提出了一种基于深度可分卷积和注意机制的双分支语义切分模型。该方法克服了语义分割中经常下样操作导致的分割效果差和特征融合过于简化的问题。网络被划分为空间细节路径和语义信息路径。空间细节路径利用较小的下采样乘法器来保持分辨率并有效地提取空间信息。语义信息路径由扩展卷积的非瓶颈残差单元构造;它提取语义特征。针对特征聚合问题,设计特征引导融合模块,对两条路径的各部分赋予不同的权重,并进行融合,得到最终输出。该算法在cityscape数据集上的分割准确率为69.6%,速度为70 fps,模型参数计数仅为0.76 M,与目前的实时语义分割算法相比具有一定的优势。该方法结合深度可分卷积和注意机制,可以有效地提取特征,弥补下采样带来的精度损失。实验表明,所提出的融合模块在融合不同特征方面优于其他方法。
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来源期刊
CiteScore
1.50
自引率
14.30%
发文量
89
期刊介绍: JACIII focuses on advanced computational intelligence and intelligent informatics. The topics include, but are not limited to; Fuzzy logic, Fuzzy control, Neural Networks, GA and Evolutionary Computation, Hybrid Systems, Adaptation and Learning Systems, Distributed Intelligent Systems, Network systems, Multi-media, Human interface, Biologically inspired evolutionary systems, Artificial life, Chaos, Complex systems, Fractals, Robotics, Medical applications, Pattern recognition, Virtual reality, Wavelet analysis, Scientific applications, Industrial applications, and Artistic applications.
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