Probing 1D convolutional neural network adapted to near-infrared spectroscopy for efficient classification of mixed fish.

Journal: Spectrochimica acta. Part A, Molecular and biomolecular spectroscopy
Published Date:

Abstract

Salmon and Cod are economically significant world-class fish that have high economic value. It is difficult to accurately sort and process them by appearance during harvest and transportation. Conventional chemical detection means are time-consuming and costly, which greatly affects the cost and efficiency of Fishery production. Therefore, there is an urgent need for smart Fisheries methods which use for the classification of mixed fish. In this paper, near-infrared spectroscopy (NIRS) was used to assess salmon and cod samples. This study aims to evaluate feasibility of a back-propagation neural network (BPNN) and a convolutional neural network (CNN) for identifying different species of fishes by the corresponding spectra in comparison to traditional chemometrics Partial Least Squares. After comparing the effects of different batch sizes, number of convolutional kernels, number of convolutional layers, and number of pooling layers on the classification of NIRS spectra comparing different structures of one-dimensional (1D)-CNN, we propose the 1D-CNN-8 model that is most suitable for the classification of mixed fish. Compared with the results of traditional chemometrics methods and BPNN, the prediction model of the 1D-CNN model can reach 98.00% Accuracy and the parameters are significantly better than others. Meanwhile, the parameters and floating-point operations of the optimal model are both small. Therefore, the improved CNN model based on the NIRS can effectively and quickly identify different kinds of fish samples and contribute to realizing edge computing at the same time.

Authors

  • Xinghao Chen
    College of Artificial Intelligence, Nankai University, Tianjin 300350, China.
  • Gongyi Cheng
    The Key Laboratory of Weak-Light Nonlinear Photonics, Ministry of Education, School of Physics, Nankai University, Tianjin 300071, China.
  • Shuhan Liu
    School of Information Science and Engineering, Lanzhou University, Lanzhou, Gansu 730000, China.
  • Sizhuo Meng
    The Key Laboratory of Weak-Light Nonlinear Photonics, Ministry of Education, School of Physics, Nankai University, Tianjin 300071, China.
  • Yiping Jiao
    Shool of Automation, Southeast University, 2nd Sipailou Road, Nanjing, China. Electronic address: ping@seu.edu.cn.
  • Wenjie Zhang
    Laboratory of Clinical Nuclear Medicine, Department of Nuclear Medicine, West China Hospital of Sichuan University, No. 37 Guo Xue Alley, Chengdu, 610041, People's Republic of China.
  • Jing Liang
    College of Management Science, Chengdu University of Technology, Chengdu, China.
  • Wang Zhang
    Department of Mechanical Engineering, Massachusetts Institute of Technology, Cambridge, Massachusetts, USA.
  • Bin Wang
    State Key Laboratory of Soil Erosion and Dryland Farming on the Loess Plateau, Northwest A&F University, Yangling 712100, China; New South Wales Department of Primary Industries, Wagga Wagga Agricultural Institute, Wagga Wagga 2650, Australia. Electronic address: bin.a.wang@dpi.nsw.gov.au.
  • Xiaoxuan Xu
    College of Artificial Intelligence, Nankai University, Tianjin 300350, China. Electronic address: xuxx@nankai.edu.cn.
  • Jing Xu
    First Department of Infectious Diseases, The First Affiliated Hospital of China Medical University, Shenyang, China.