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Enhancing Sustainable Intelligent Transportation Systems Through Lightweight Monocular Depth Estimation Based on Volume Density

Author

Listed:
  • Xianfeng Tan

    (Shandong Hi-Speed Group, Jinan 250098, China
    State Key Lab of Intelligent Transportation System, Beijing 100191, China)

  • Chengcheng Wang

    (Shandong Hi-Speed Group, Jinan 250098, China
    State Key Lab of Intelligent Transportation System, Beijing 100191, China)

  • Ziyu Zhang

    (Shandong Hi-Speed Group, Jinan 250098, China
    State Key Lab of Intelligent Transportation System, Beijing 100191, China)

  • Zhendong Ping

    (Shandong Hi-Speed Group, Jinan 250098, China
    State Key Lab of Intelligent Transportation System, Beijing 100191, China)

  • Jieying Pan

    (State Key Lab of Intelligent Transportation System, Beijing 100191, China
    School of Transportation Science and Engineering, Beihang University, Beijing 100191, China)

  • Hao Shan

    (State Key Lab of Intelligent Transportation System, Beijing 100191, China
    School of Transportation Science and Engineering, Beihang University, Beijing 100191, China)

  • Ruikai Li

    (State Key Lab of Intelligent Transportation System, Beijing 100191, China
    School of Transportation Science and Engineering, Beihang University, Beijing 100191, China)

  • Meng Chi

    (State Key Lab of Intelligent Transportation System, Beijing 100191, China
    Shandong Hi-Speed Information Group, Jinan 250098, China)

  • Zhiyong Cui

    (State Key Lab of Intelligent Transportation System, Beijing 100191, China
    School of Transportation Science and Engineering, Beihang University, Beijing 100191, China)

Abstract

Depth estimation is a critical enabling technology for sustainable intelligent transportation systems (ITSs), as it supports essential functions such as obstacle detection, navigation, and traffic management. However, existing Neural Radiance Field (NeRF)-based monocular depth estimation methods often suffer from high computational costs and poor performance in occluded regions, limiting their applicability in real-world, resource-constrained environments. To address these challenges, this paper proposes a lightweight monocular depth estimation framework that integrates a novel capacity redistribution strategy and an adaptive occlusion-aware training mechanism. By shifting computational load from resource-intensive multi-layer perceptrons (MLPs) to efficient separable convolutional encoder–decoder networks, our method significantly reduces memory usage to 234 MB while maintaining competitive accuracy. Furthermore, a divide-and-conquer training strategy explicitly handles occluded regions, improving reconstruction quality in complex urban scenarios. Experimental evaluations on the KITTI and V2X-Sim datasets demonstrate that our approach not only achieves superior depth estimation performance but also supports real-time operation on edge devices. This work contributes to the sustainable development of ITS by offering a practical, efficient, and scalable solution for environmental perception, with potential benefits for energy efficiency, system affordability, and large-scale deployment.

Suggested Citation

  • Xianfeng Tan & Chengcheng Wang & Ziyu Zhang & Zhendong Ping & Jieying Pan & Hao Shan & Ruikai Li & Meng Chi & Zhiyong Cui, 2025. "Enhancing Sustainable Intelligent Transportation Systems Through Lightweight Monocular Depth Estimation Based on Volume Density," Sustainability, MDPI, vol. 17(24), pages 1-26, December.
  • Handle: RePEc:gam:jsusta:v:17:y:2025:i:24:p:11271-:d:1819241
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