Li Tao, Gang Yijin, Li Sumin, Shang Yizi
School of Human Settlements and Civil Engineering, Xi'an Jiaotong University, Xi'an, China.
School of Information Engineering, Minzu University of China, Beijing, China.
PLoS One. 2025 Jun 9;20(6):e0324067. doi: 10.1371/journal.pone.0324067. eCollection 2025.
Marine biological detection is critical to environmental conservation and the use of marine resources. In actual applications, detecting aquatic species quickly and accurately while using few resources remains a difficulty. To address this problem, this research proposes a novel fast and efficient lightweight target detection network (SCR-Net). First, a fast and lightweight Spatial Pyramid Pool ELAN (SPPE) module is proposed and implemented, which enhances the model's performance by leveraging ELAN's effective feature aggregation ability and SPPF's spatial pyramid pooling capacity. Second, a cross-scale feature fusion pyramid (CFFP) structure is introduced, which significantly reduces the number of parameters and computational cost during feature fusion. Third, a lightweight feature extraction module named RGE is designed, utilizing low-cost processes to create duplicate feature maps and reparameterization to drastically accelerate model inference. Compared to the baseline model, SCR-Net has 57.4% fewer parameters, 37% less computation, and an mAP@0.5 of 83.2% on the DUO dataset. Ablation experiments validate the effectiveness of the proposed modules, and comparative experiments on DUO and UDD datasets demonstrate that SCR-Net achieves superior overall performance compared to existing lightweight state-of-the-art underwater target detection models.
海洋生物检测对于环境保护和海洋资源利用至关重要。在实际应用中,在资源消耗较少的情况下快速准确地检测水生物种仍然是一个难题。为了解决这个问题,本研究提出了一种新颖的快速高效轻量级目标检测网络(SCR-Net)。首先,提出并实现了一种快速轻量级的空间金字塔池化ELAN(SPPE)模块,该模块通过利用ELAN的有效特征聚合能力和SPPF的空间金字塔池化能力来提高模型性能。其次,引入了一种跨尺度特征融合金字塔(CFFP)结构,该结构在特征融合过程中显著减少了参数数量和计算成本。第三,设计了一个名为RGE的轻量级特征提取模块,利用低成本流程创建重复特征图并进行重新参数化,以大幅加速模型推理。与基线模型相比,SCR-Net在DUO数据集上的参数减少了57.4%,计算量减少了37%,mAP@0.5为83.2%。消融实验验证了所提模块的有效性,在DUO和UDD数据集上的对比实验表明,与现有的轻量级先进水下目标检测模型相比,SCR-Net具有更优的整体性能。