Deakin University
Browse

A Part-based Deep Learning Network for identifying individual crabs using abdomen images

Version 2 2024-06-04, 00:08
Version 1 2023-03-10, 03:07
journal contribution
posted on 2024-06-04, 00:08 authored by C Wu, Z Xie, K Chen, C Shi, Y Ye, Y Xin, R Zarei, Guangyan HuangGuangyan Huang
Crabs, such as swimming crabs and mud crabs, are famous for their high nutritional value but are difficult to preserve. Thus, the traceability of crabs is vital for food safety. Existing deep-learning methods can be applied to identify individual crabs. However, there is no previous study that used abdomen images to identify individual crabs. In this paper, we provide a novel Part-based Deep Learning Network (PDN) to reliably identify an individual crab from its abdomen images captured under various conditions. In our PDN, we developed three non-overlapping and three overlapping partitions strategies of the abdomen image and further designed a part attention block. A swimming crab (Crab-201) dataset with the abdomen images of 201 swimming crabs and a more complex mud crab dataset (Crab-146) were collected to train and test the proposed PDN. Experimental results show that the proposed PDN using the overlapping partition strategy is better than the non-overlapping partition strategy. The edge texture of the abdomen has more identifiable features than the sulciform texture of the lower part of the abdomen. It also demonstrates that the proposed PDN_OS3, which emphasizes the edge texture of the abdomen with overlapping partition strategies, is more reliable and accurate than the counterpart methods to identify an individual crab.

History

Journal

Frontiers in Marine Science

Volume

10

Pagination

01-12

Location

Lausanne, Switzerland

ISSN

2296-7745

eISSN

2296-7745

Language

English

Publication classification

C1 Refereed article in a scholarly journal

Publisher

Frontiers Media SA

Usage metrics

    Research Publications

    Exports

    RefWorks
    BibTeX
    Ref. manager
    Endnote
    DataCite
    NLM
    DC