Far-Sighted BiSeNet V2 for Real-time Semantic Segmentation

Te-Wei Chen, Yen-Ting Huang, W. Liao
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引用次数: 1

Abstract

Real-time semantic segmentation is one of the most investigated areas in the field of computer vision. In this paper, we focus on improving the performance of BiSeNet V2 by modifying its architecture. BiSeNet V2 is a two-branch segmentation model designed to extract semantic information from high-level feature maps and detailed information from low-level feature maps. The proposed enhancement remains lightweight and real-time with two main modifications: enlarging the contextual information and breaking the constraint caused by the fixed size of convolutional kernels. Specifically, additional modules known as dilated strip pooling (DSP) and dilated mixed pooling (DMP) are appended to the original BiSeNet V2 model to form the far-sighted BiSeNet V2. The proposed dilated strip pooling block and dilated mixed pooling module are adapted from modules proposed in SPNet, with extra branches composed of dilated convolutions to provide larger receptive fields. The proposed far-sighted BiSeNet V2 improves the accuracy to 76.0% from 73.4% with an FPS of 94 on Nvidia 1080Ti. Moreover, the proposed dilated mixed pooling block achieves the same performance as that of the model with two mixed pooling modules using only 2/3 of the number of parameters.
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面向实时语义分割的远视距BiSeNet V2
实时语义分割是计算机视觉领域研究最多的领域之一。在本文中,我们着重于通过修改BiSeNet V2的架构来提高其性能。BiSeNet V2是一种双分支分割模型,旨在从高级特征图中提取语义信息,从低级特征图中提取详细信息。本文提出的增强方法通过两个主要改进保持了轻量级和实时性:扩大上下文信息和打破卷积核固定大小的限制。具体来说,在原来的BiSeNet V2模型上增加了扩展条形池化(DSP)和扩展混合池化(DMP)等模块,形成了具有远见的BiSeNet V2。本文提出的扩展条形池化模块和扩展混合池化模块是在SPNet中提出的模块的基础上改进而来的,增加了由扩展卷积组成的分支以提供更大的接受域。提出的远视BiSeNet V2在Nvidia 1080Ti上将精度从73.4%提高到76.0%,FPS为94。此外,所提出的扩展混合池块仅使用2/3的参数数量就可以达到与具有两个混合池模块的模型相同的性能。
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