LiteSeg: A Novel Lightweight ConvNet for Semantic Segmentation
Emara, Taha; Hossam El DIn Hassan Abdelmunim; Abbas, Hazem M.;
Abstract
Semantic image segmentation plays a pivotal role in many vision applications including autonomous driving and medical image analysis. Most of the former approaches move towards enhancing the performance in terms of accuracy with a little awareness of computational efficiency. In this paper, we introduce LiteSeg, a lightweight architecture for semantic image segmentation. In this work, we explore a new deeper version of Atrous Spatial Pyramid Pooling module (ASPP) and apply short and long residual connections, and depthwise separable convolution, resulting in a faster and efficient model. LiteSeg architecture is introduced and tested with multiple backbone networks as Darknet19, MobileNet, and ShuffleNet to provide multiple trade-offs between accuracy and computational cost. The proposed model LiteSeg, with MobileNetV2 as a backbone network, achieves an accuracy of 67.81% mean intersection over union at 161 frames per second with 640 × 360 resolution on the Cityscapes dataset.
Other data
| Title | LiteSeg: A Novel Lightweight ConvNet for Semantic Segmentation | Authors | Emara, Taha; Hossam El DIn Hassan Abdelmunim ; Abbas, Hazem M. | Keywords | atrous spatial pyramid pooling;depthwise separable convolution;encoder decoder;semantic image segmentation;Computer Science;Computer Vision and Pattern Recognition;Computer Science - Computer Vision and Pattern Recognition | Issue Date | 1-Dec-2019 | Conference | 2019 Digital Image Computing Techniques and Applications Dicta 2019 | Description | Accepted, DICTA 2019 |
ISBN | [9781728138572] | DOI | 10.1109/DICTA47822.2019.8945975 | Scopus ID | 2-s2.0-85078697672 |
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