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Lane Detection Based on ECBAM_(A)SPP Model
by
Huang, Qiwei
, Gu, Xiang
, Du, Chaonan
in
Liu, Timothy
2024
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Lane Detection Based on ECBAM_(A)SPP Model
by
Huang, Qiwei
, Gu, Xiang
, Du, Chaonan
in
Liu, Timothy
2024
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Journal Article
Lane Detection Based on ECBAM_(A)SPP Model
2024
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Overview
With the growing prominence of autonomous driving, the demand for accurate and efficient lane detection has increased significantly. Beyond ensuring accuracy, achieving high detection speed is crucial to maintaining real-time performance, stability, and safety. To address this challenge, this study proposes the ECBAM_ASPP model, which integrates the Efficient Convolutional Block Attention Module (ECBAM) with the Atrous Spatial Pyramid Pooling (ASPP) module. Building on traditional attention mechanisms, the ECBAM module employs dynamic convolution kernels to eliminate dimensionality reduction, enhancing the efficiency of feature channel learning and local interactions while preserving computational efficiency. The ECBAM_ASPP model incorporates the ECBAM attention mechanism into the feature extraction network, effectively directing the network to focus on salient features while suppressing irrelevant ones. Additionally, through variable sampling of the input, the model achieves multi-scale feature extraction, enabling it to capture richer lane-related feature information. Experimental results on the TuSimple and CULane datasets demonstrate that the ECBAM_ASPP model significantly improves real-time performance while maintaining high detection accuracy. Compared with baseline methods, the proposed model delivers superior overall performance, showcasing greater robustness and practicality.
Publisher
MDPI AG
Subject
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