Scientific Reports (Nov 2023)

Anomalous behavior recognition of underwater creatures using lite 3D full-convolution network

  • Jung-Hua Wang,
  • Te-Hua Hsu,
  • Yi-Chung Lai,
  • Yan-Tsung Peng,
  • Zhen-Yao Chen,
  • Ying-Ren Lin,
  • Chang-Wen Huang,
  • Chung-Ping Chiang

DOI
https://doi.org/10.1038/s41598-023-47128-2
Journal volume & issue
Vol. 13, no. 1
pp. 1 – 11

Abstract

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Abstract Global warming and pollution could lead to the destruction of marine habitats and loss of species. The anomalous behavior of underwater creatures can be used as a biometer for assessing the health status of our ocean. Advances in behavior recognition have been driven by the active application of deep learning methods, yet many of them render superior accuracy at the cost of high computational complexity and slow inference. This paper presents a real-time anomalous behavior recognition approach that incorporates a lightweight deep learning model (Lite3D), object detection, and multitarget tracking. Lite3D is characterized in threefold: (1) image frames contain only regions of interest (ROI) generated by an object detector; (2) no fully connected layers are needed, the prediction head itself is a flatten layer of 1 × $${\mathcal{l}}$$ l @ 1× 1, $${\mathcal{l}}$$ l = number of categories; (3) all the convolution kernels are 3D, except the first layer degenerated to 2D. Through the tracking, a sequence of ROI-only frames is subjected to 3D convolutions for stacked feature extraction. Compared to other 3D models, Lite3D is 50 times smaller in size and 57 times lighter in terms of trainable parameters and can achieve 99% of F1-score. Lite3D is ideal for mounting on ROV or AUV to perform real-time edge computing.