Merchant Marine College, Shanghai Maritime University, Shanghai 201306, China.
College of Information Engineering, Shanghai Maritime University, Shanghai 201306, China.
Sensors (Basel). 2022 Sep 29;22(19):7420. doi: 10.3390/s22197420.
Ship fire is one of the greatest dangers to ship navigation safety. Nevertheless, typical detection methods have limited detection effectiveness and accuracy due to distance restrictions and ship motion. Although the issue can be addressed by image recognition algorithms based on deep learning, the computational complexity and efficiency for ship detection are tough. This paper proposes a lightweight target identification technique based on the modified YOLOv4-tiny algorithm for the precise and efficient detection of ship fires, taking into account the distinctive characteristics of ship fires and the marine environment. Initially, a multi-scale detection technique is applied to broaden the detection range and integrate deep semantic information, thereby enhancing the feature information of small targets and obscured objects and improving the detection precision. Then, the proposed algorithm employs the SE attention mechanism for inter-channel feature fusion to improve the capability of feature extraction and the precision of ship fire detection. Last but not least, picture transformation and migration learning are added to the small ship fire dataset to accelerate the convergence pace, improve the convergence effect, and reduce dataset dependence. The simulation experiments reveal that the proposed I-YOLOv4-tiny + SE model outperforms the benchmark algorithm in terms of ship fire detection accuracy and detection efficiency and that it satisfies the real-time ship fire warning criteria in demanding maritime environments.
船舶火灾是船舶航行安全的最大威胁之一。然而,由于距离限制和船舶运动等因素,典型的检测方法在检测效果和准确性方面存在局限性。尽管基于深度学习的图像识别算法可以解决这个问题,但船舶检测的计算复杂度和效率仍然是一个挑战。本文提出了一种基于改进的 YOLOv4-tiny 算法的轻量级目标识别技术,用于精确高效地检测船舶火灾,同时考虑到船舶火灾和海洋环境的独特特征。首先,采用多尺度检测技术来扩大检测范围并整合深度语义信息,从而增强小目标和遮挡物的特征信息,提高检测精度。然后,所提出的算法采用 SE 注意力机制进行通道间特征融合,以提高特征提取能力和船舶火灾检测精度。最后,在小船舶火灾数据集上添加图像变换和迁移学习,以加快收敛速度,提高收敛效果,并降低数据集的依赖性。仿真实验表明,所提出的 I-YOLOv4-tiny+SE 模型在船舶火灾检测精度和检测效率方面优于基准算法,并且在苛刻的海上环境中满足实时船舶火灾报警标准。