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通道混洗與跨尺度增強的輕量級鐵路全景分割

Lightweight railway panoramic segmentation based on channel shuffle and cross-scale enhancement

  • 摘要: 針對高速鐵路場景下圖像全景分割時存在全景分割精確度低,難以實現輕量級實時分割等問題,提出了一種通道混洗與跨尺度增強的輕量級鐵路全景分割方法. 首先,基于FasterNet網絡,提出了輕量化CS_FasterNet特征提取網絡,通過部分卷積和通道混洗優化了特征信息的聚合,實現對鐵路場景下全景分割輕量化特征提取. 其次,設計了多尺度特征交互增強模塊,利用特征交互和跨特征融合,全面地捕捉局部的細節和全局信息,提高圖像特征提取的質量. 最后,改進預測融合模塊對語義結果與實例結果進行融合,提升網絡對圖像分割的準確性,得到更加精細的全景分割輸出結果. 實驗結果表明:所提輕量級模型在模型每秒處理幀率和計算量等評價指標均優于對比方法,相較于UPSNet方法,本文方法的每秒約處理11.5幀,全景分割質量提升了約9.9%,能夠實現對不同鐵路場景下圖像全景分割的準確性和實時性.

     

    Abstract: A lightweight railway panoramic segmentation method based on channel mixing and cross-scale enhancement was proposed to address the challenges of low accuracy and difficulty of achieving lightweight real-time panoramic segmentation in high-speed railway scene images. The model consists of three main components: a lightweight CS_FasterNet feature extraction network, multi-scale feature interaction enhancement module, and prediction fusion output module. First, based on the FasterNet network, a lightweight CS_FasterNet feature extraction network was proposed. FasterNet reduces redundant calculations through partial convolution to enhance processing speed while preserving high detection accuracy. However, the original design applies filters to only a portion of the input channels, potentially limiting feature extraction for the remaining channels. This limitation was addressed by optimizing the aggregation of local and global feature information through partial convolution and channel shuffling, combined with feature recombination techniques to reduce computational complexity and improve feature extraction in lightweight railway scenes. Second, based on the completion of the lightweight CS_FasterNet feature extraction, a multiscale feature interaction enhancement module was designed to improve the network’s image segmentation ability and enhance the representation of features. This module consists of an attention-based intrascale feature interaction module and a cross-scale feature fusion module. The attention-based intrascale feature interaction module applies a multihead attention mechanism to extract pixel-level semantic features from high-level image features, expanding the receptive field and capturing fine-grained information. The cross-scale feature fusion module adopts both bottom-up and top-down fusion paths to integrate feature maps of different scale outputs from the backbone network, improving scale feature utilization and enabling comprehensive extraction of local details and global information. Finally, the prediction fusion module was refined to integrate the semantic and instance results. In the panoramic segmentation task, the Soft NMS method was used to improve the accuracy of pixel classification. Soft NMS reduces confidence scores for detection boxes based on the intersection-to-union ratio and uses a Gaussian weighted score to identify the true detection box, leading to improved segmentation accuracy and more refined panoramic segmentation outputs. Experimental results indicate that the proposed lightweight model excels in frame rate per second and computational complexity. A higher frame rate indicates faster segmentation speed, and lower computational complexity favors lightweight segmentation. In this model, evaluation metrics, such as the processing frame rate per second and computational complexity, outperformed the comparison methods. Compared with the UPSNet method, this method increased the processing frame rate by approximately 11.5 frames per second and improved the quality of the panoramic segmentation by approximately 9.9%. This method achieves accurate, real-time panoramic segmentation across various railway scenarios.

     

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