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Papers/Efficient Dense Modules of Asymmetric Convolution for Real...

Efficient Dense Modules of Asymmetric Convolution for Real-Time Semantic Segmentation

Shao-Yuan Lo, Hsueh-Ming Hang, Sheng-Wei Chan, Jing-Jhih Lin

2018-09-17Real-Time Semantic SegmentationSegmentationSemantic Segmentation
PaperPDFCodeCodeCode(official)Code

Abstract

Real-time semantic segmentation plays an important role in practical applications such as self-driving and robots. Most semantic segmentation research focuses on improving estimation accuracy with little consideration on efficiency. Several previous studies that emphasize high-speed inference often fail to produce high-accuracy segmentation results. In this paper, we propose a novel convolutional network named Efficient Dense modules with Asymmetric convolution (EDANet), which employs an asymmetric convolution structure and incorporates dilated convolution and dense connectivity to achieve high efficiency at low computational cost and model size. EDANet is 2.7 times faster than the existing fast segmentation network, ICNet, while it achieves a similar mIoU score without any additional context module, post-processing scheme, and pretrained model. We evaluate EDANet on Cityscapes and CamVid datasets, and compare it with the other state-of-art systems. Our network can run with the high-resolution inputs at the speed of 108 FPS on one GTX 1080Ti.

Results

TaskDatasetMetricValueModel
Semantic SegmentationCityscapes testMean IoU (class)67.3EDANet
Semantic SegmentationCamVidGlobal Accuracy90.8EDANet
Semantic SegmentationCamVidMean IoU66.4EDANet
Semantic SegmentationCityscapes testTime (ms)9.2EDANet
Semantic SegmentationCityscapes testmIoU67.3EDANet
Semantic SegmentationCamVidmIoU66.4EDANet
10-shot image generationCityscapes testMean IoU (class)67.3EDANet
10-shot image generationCamVidGlobal Accuracy90.8EDANet
10-shot image generationCamVidMean IoU66.4EDANet
10-shot image generationCityscapes testTime (ms)9.2EDANet
10-shot image generationCityscapes testmIoU67.3EDANet
10-shot image generationCamVidmIoU66.4EDANet

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