IET Computer Vision (Jun 2023)

Semantics recalibration and detail enhancement network for real‐time semantic segmentation

  • Aizhong Mi,
  • Mingming Gao,
  • Zhanqiang Huo,
  • Yingxu Qiao,
  • Jian Chen,
  • Haiyang Jia

DOI
https://doi.org/10.1049/cvi2.12180
Journal volume & issue
Vol. 17, no. 4
pp. 461 – 472

Abstract

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Abstract Real‐time semantic segmentation is a crucial technology in automatic driving scenarios, which needs to meet both high precision and real‐time. The authors observe that learning complex correlations between object categories is vital in the real‐time semantic segmentation task. Moreover, image spatial detail information plays an important role in small object segmentation and preserving edges and textures. A Semantics Recalibration and Detail Enhancement Network for real‐time semantic segmentation based on BiSeNet V2 is proposed. On the one hand, a lightweight Semantics Recalibration module is designed to effectively extract global semantic contextual information, which combines pyramid segmentation and adaptive recalibration operations to learn the correlations between object categories. On the other hand, a Detail Enhancement module takes the feature maps of the shallow layers in the semantics branch as input and refines the feature maps to highlight the detail information. Finally, quantitative and qualitative analyses on Cityscapes and CamVid datasets demonstrate the effectiveness and generalisation of the proposed method.

Keywords