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3 months ago

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

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

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.

Code Repositories

PaddlePaddle/PaddleSeg
Official
paddle
Mentioned in GitHub
Deci-AI/super-gradients
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
real-time-semantic-segmentation-on-camvidPP-LiteSeg-B
Frame (fps): 154.8
mIoU: 75
real-time-semantic-segmentation-on-camvidPP-LiteSeg-T
Frame (fps): 222.3
mIoU: 73.3
real-time-semantic-segmentation-on-cityscapesPP-LiteSeg-B1
Frame (fps): 195.3(1080Ti)
mIoU: 73.9%
real-time-semantic-segmentation-on-cityscapesPP-LiteSeg-B2
Frame (fps): 102.6(1080Ti)
mIoU: 77.5%
real-time-semantic-segmentation-on-cityscapesPP-LiteSeg-T1
Frame (fps): 273.6(1080Ti)
mIoU: 72.0%
real-time-semantic-segmentation-on-cityscapesPP-LiteSeg-T2
Frame (fps): 143.6(1080Ti)
mIoU: 74.9%
real-time-semantic-segmentation-on-cityscapes-1PP-LiteSeg-T1
mIoU: 73.1
real-time-semantic-segmentation-on-cityscapes-1PP-LiteSeg-B2
mIoU: 78.2
real-time-semantic-segmentation-on-cityscapes-1PP-LiteSeg-T2
mIoU: 76
real-time-semantic-segmentation-on-cityscapes-1PP-LiteSeg-B1
mIoU: 75.3

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