YOLO-Rip: A modified lightweight network for Rip currents detection

Author:

Zhu Daoheng,Qi Rui,Hu Pengpeng,Su Qianxin,Qin Xue,Li Zhiqiang

Abstract

Rip currents form on beaches worldwide and pose a potential safety hazard for beach visitors. Therefore, effectively identifying rip currents from beach scenes and providing real-time alerts to beach managers and beachgoers is crucial. In this study, the YOLO-Rip model was proposed to detect rip current targets based on current popular deep learning techniques. First, based on the characteristics of a large target size in rip current images, the neck region in the YOLOv5s model was streamlined. The 80 × 80 feature map branches suitable for detecting small targets were removed to reduce the number of parameters, decrease the complexity of the model, and improve the real-time detection performance. Subsequently, we proposed adding a joint dilated convolutional (JDC) module to the lateral connection of the feature pyramid network (FPN) to expand the perceptual field, improve feature information utilization, and reduce the number of parameters, while keeping the model compact. Finally, the SimAM module, which is a parametric-free attention mechanism, was added to optimize the target detection accuracy. Several mainstream neural network models have been used to train self-built rip current image datasets. The experimental results show that (i) the detection results from different models using the same dataset vary greatly and (ii) compared with YOLOv5s, YOLO-Rip increased the mAP value by approximately 4% (to 92.15%), frame rate by 2.18 frames per second, and the model size by only 0.46 MB. The modified model improved the detection accuracy while keeping the model streamlined, indicating its efficiency and accuracy in the detection of rip currents.

Publisher

Frontiers Media SA

Subject

Ocean Engineering,Water Science and Technology,Aquatic Science,Global and Planetary Change,Oceanography

Cited by 6 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. A Fine-grained Attributes Recognition Model for Clothing Based on Improved the CSPDarknet and PAFPN Network;2024-03-19

2. Explainable Rip Current Detection and Visualization with XAI EigenCAM;2024 26th International Conference on Advanced Communications Technology (ICACT);2024-02-04

3. Rip Current Segmentation: A Novel Benchmark and YOLOv8 Baseline Results;2023 IEEE/CVF Conference on Computer Vision and Pattern Recognition Workshops (CVPRW);2023-06

4. Application of hybrid neural network in data-driven flow field simulation;Second International Conference on Digital Society and Intelligent Systems (DSInS 2022);2023-04-03

5. KRS-Net: A Classification Approach Based on Deep Learning for Koi with High Similarity;Biology;2022-11-29

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