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144

PP-LiteSeg: A Superior Real-Time Semantic Segmentation Model

6 April 2022
Juncai Peng
Yi Liu
Shiyu Tang
Yuying Hao
Lutao Chu
Guowei Chen
Zewu Wu
Zeyu Chen
Zhiliang Yu
Yuning Du
Qingqing Dang
Baohua Lai
Qiwen Liu
Xiaoguang Hu
Dianhai Yu
Yanjun Ma
    SSeg
    VLM
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Abstract

Real-world applications have high demands for semantic segmentation methods. Although semantic segmentation has made remarkable leap-forwards with deep learning, the performance of real-time methods is not satisfactory. In this work, we propose PP-LiteSeg, a novel lightweight model for the real-time semantic segmentation task. Specifically, we present a Flexible and Lightweight Decoder (FLD) to reduce computation overhead of previous decoder. To strengthen feature representations, we propose a Unified Attention Fusion Module (UAFM), which takes advantage of spatial and channel attention to produce a weight and then fuses the input features with the weight. Moreover, a Simple Pyramid Pooling Module (SPPM) is proposed to aggregate global context with low computation cost. Extensive evaluations demonstrate that PP-LiteSeg achieves a superior trade-off between accuracy and speed compared to other methods. On the Cityscapes test set, PP-LiteSeg achieves 72.0% mIoU/273.6 FPS and 77.5% mIoU/102.6 FPS on NVIDIA GTX 1080Ti. Source code and models are available at PaddleSeg: https://github.com/PaddlePaddle/PaddleSeg.

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