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Auteurs principaux: Qiu, Yangyang, Xu, Guoan, Gao, Guangwei, Guo, Zhenhua, Yu, Yi, Lin, Chia-Wen
Format: Preprint
Publié: 2024
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Accès en ligne:https://arxiv.org/abs/2410.02224
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author Qiu, Yangyang
Xu, Guoan
Gao, Guangwei
Guo, Zhenhua
Yu, Yi
Lin, Chia-Wen
author_facet Qiu, Yangyang
Xu, Guoan
Gao, Guangwei
Guo, Zhenhua
Yu, Yi
Lin, Chia-Wen
contents Recently, integrating the local modeling capabilities of Convolutional Neural Networks (CNNs) with the global dependency strengths of Transformers has created a sensation in the semantic segmentation community. However, substantial computational workloads and high hardware memory demands remain major obstacles to their further application in real-time scenarios. In this work, we propose a Lightweight Multiple-Information Interaction Network (LMIINet) for real-time semantic segmentation, which effectively combines CNNs and Transformers while reducing redundant computations and memory footprints. It features Lightweight Feature Interaction Bottleneck (LFIB) modules comprising efficient convolutions that enhance context integration. Additionally, improvements are made to the Flatten Transformer by enhancing local and global feature interaction to capture detailed semantic information. Incorporating a combination coefficient learning scheme in both LFIB and Transformer blocks facilitates improved feature interaction. Extensive experiments demonstrate that LMIINet excels in balancing accuracy and efficiency. With only 0.72M parameters and 11.74G FLOPs (Floating Point Operations Per Second), LMIINet achieves 72.0\% mIoU at 100 FPS (Frames Per Second) on the Cityscapes test set and 69.94\% mIoU (mean Intersection over Union) at 160 FPS on the CamVid test dataset using a single RTX2080Ti GPU.
format Preprint
id arxiv_https___arxiv_org_abs_2410_02224
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Efficient Semantic Segmentation via Lightweight Multiple-Information Interaction Network
Qiu, Yangyang
Xu, Guoan
Gao, Guangwei
Guo, Zhenhua
Yu, Yi
Lin, Chia-Wen
Computer Vision and Pattern Recognition
Recently, integrating the local modeling capabilities of Convolutional Neural Networks (CNNs) with the global dependency strengths of Transformers has created a sensation in the semantic segmentation community. However, substantial computational workloads and high hardware memory demands remain major obstacles to their further application in real-time scenarios. In this work, we propose a Lightweight Multiple-Information Interaction Network (LMIINet) for real-time semantic segmentation, which effectively combines CNNs and Transformers while reducing redundant computations and memory footprints. It features Lightweight Feature Interaction Bottleneck (LFIB) modules comprising efficient convolutions that enhance context integration. Additionally, improvements are made to the Flatten Transformer by enhancing local and global feature interaction to capture detailed semantic information. Incorporating a combination coefficient learning scheme in both LFIB and Transformer blocks facilitates improved feature interaction. Extensive experiments demonstrate that LMIINet excels in balancing accuracy and efficiency. With only 0.72M parameters and 11.74G FLOPs (Floating Point Operations Per Second), LMIINet achieves 72.0\% mIoU at 100 FPS (Frames Per Second) on the Cityscapes test set and 69.94\% mIoU (mean Intersection over Union) at 160 FPS on the CamVid test dataset using a single RTX2080Ti GPU.
title Efficient Semantic Segmentation via Lightweight Multiple-Information Interaction Network
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2410.02224