A Multi-Level Adaptive Lightweight Net for Damaged Road Marking Detection Based on Knowledge Distillation
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Published:2024-07-16
Issue:14
Volume:16
Page:2593
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ISSN:2072-4292
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Container-title:Remote Sensing
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language:en
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Short-container-title:Remote Sensing
Author:
Wang Junwei123, Zeng Xiangqiang14ORCID, Wang Yong1ORCID, Ren Xiang1, Wang Dongliang1ORCID, Qu Wenqiu12ORCID, Liao Xiaohan1, Pan Peifen5
Affiliation:
1. State Key Laboratory of Resources and Environmental Information System, Institute of Geographic Sciences and Natural Resources Research, Chinese Academy of Sciences, Beijing 100101, China 2. University of Chinese Academy of Sciences, Beijing 100049, China 3. Beijing International Data Exchange, Beijing 100027, China 4. State Key Laboratory of Remote Sensing Science, Faculty of Geographical Science, Beijing Normal University, Beijing 100091, China 5. China Academy of Railway Sciences Group Co., Ltd., Beijing 100081, China
Abstract
To tackle the complexity and limited applicability of high-precision segmentation models for damaged road markings, this study proposes a Multi-level Adaptive Lightweight Network (MALNet) based on knowledge distillation. By incorporating multi-scale dilated convolution and adaptive spatial channel attention fusion modules, the MALNet model significantly enhances the precision, integrity, and robustness of its segmentation branch. Furthermore, it employs an intricate knowledge distillation strategy, channeling rich, layered insights from a teacher model to a student model, thus elevating the latter’s segmentation ability. Concurrently, it streamlines the student model by markedly reducing its parameter count and computational demands, culminating in a segmentation network that is both high-performing and pragmatic. Rigorous testing on three distinct data sets for damaged road marking detection—CDM_P (Collective Damaged road Marking—Public), CDM_H (Collective Damaged road Marking—Highways), and CDM_C (Collective Damaged road Marking—Cityroad)—underscores the MALNet model’s superior segmentation abilities across all damage types, outperforming competing models in accuracy and completeness. Notably, the MALNet model excels in parameter efficiency, computational economy, and throughput. After distillation, the student model’s parameters and computational load decrease to only 31.78% and 27.40% of the teacher model’s, respectively, while processing speeds increase to 1.9 times, demonstrating a significant improvement in lightweight design.
Funder
Fujian Provincial Major Science and Technology Project- Key technology of Intelligent Inspection of Highway UAV Network by Remote Sensing Third Xinjiang Scientific Expedition Program National Key R&D Program of China Strategic Priority Research Program of Chinese Academy of Sciences Research project of China National Railway Group
Reference45 articles.
1. Morrissett, A. (2020, January 20–23). Sherif Abdelwahed A Review of Non-Lane Road Marking Detection and Recognition. Proceedings of the 2020 IEEE 23rd International Conference on Intelligent Transportation Systems (ITSC), Rhodes, Greece. 2. A Comprehensive Approach for Road Marking Detection and Recognition;Ding;Multimed. Tools Appl.,2020 3. Lyu, X., Li, X., Dang, D., Dou, H., Wang, K., and Lou, A. (2022). Unmanned Aerial Vehicle (UAV) Remote Sensing in Grassland Ecosystem Monitoring: A Systematic Review. Remote Sens., 14. 4. Liu, J., Liao, X., Ye, H., Yue, H., Wang, Y., Tan, X., and Wang, D. (2022). UAV Swarm Scheduling Method for Remote Sensing Observations during Emergency Scenarios. Remote Sens., 14. 5. Semantic Segmentation of High-Resolution Remote Sensing Images Based on a Class Feature Attention Mechanism Fused with Deeplabv3+;Wang;Comput. Geosci.,2022
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