Laser & Optoelectronics Progress, Volume. 60, Issue 2, 0220001(2023)

Marine Creature Detection Based on Sample Iterative Fusion

Lidong Wu1, Zongju Peng1,2、*, Xin Li2, Tao Su2, Fen Chen2, and Xiaodong Wang1
Author Affiliations
  • 1Faculty of Electrical Engineering and Computer Science, Ningbo University, Ningbo 315000, Zhejiang , China
  • 2School of Electrical and Electronic Engineering, Chongqing University of Technology, Chongqing 310027, China
  • show less

    Occlusion caused by gathering of marine creatures together is an important reason for false and missed detections. Therefore, this study proposes a marine creature detection method based on iterative fusion of sample-assisted network training. First, an improved deep hole residual structure is selected as the feature extraction network, which improves the feature extraction ability of the network. Second, because of the occlusion and dense characteristics of marine creature images, the loss function is improved to avoid false and missed detections. Finally, to solve the problems of target occlusion and data imbalance, a sample iterative fusion method is proposed to generate an extended training set of simulated images. This improves the effectiveness of network training and the ability to detect marine creatures with a small sample size. The experimental results show that the proposed method can achieve a detection accuracy of 91.36% on the URPC2018 dataset and 90.27% on the Taiwan fish dataset. The detection accuracy and speed of the proposed method are higher than those of existing target detection algorithms.

    Tools

    Get Citation

    Copy Citation Text

    Lidong Wu, Zongju Peng, Xin Li, Tao Su, Fen Chen, Xiaodong Wang. Marine Creature Detection Based on Sample Iterative Fusion[J]. Laser & Optoelectronics Progress, 2023, 60(2): 0220001

    Download Citation

    EndNote(RIS)BibTexPlain Text
    Save article for my favorites
    Paper Information

    Category: Optics in Computing

    Received: Sep. 22, 2021

    Accepted: Nov. 8, 2021

    Published Online: Jan. 6, 2023

    The Author Email: Peng Zongju (pengzongju@126.com)

    DOI:10.3788/LOP212567

    Topics