Construction of GAN-RES and its application to small sample rare fossil
recognition
- JiaHui Xu,
- Yang Lu,
- Xu Xu
Yang Lu
Jilin Normal University
Corresponding Author:luyang33@126.com
Author ProfileAbstract
not-yet-known
not-yet-known
not-yet-known
unknown
Traditional fossil identification relies on the rich experience and
knowledge of paleontologists, and existing intelligent identification
methods mainly rely on deep learning to train on a large number of
fossil graphic samples achieve a high degree of precision. In order to
solve the above problems, and still be able to accurately recognize
small samples of rare fossils, we try to use the Generative Adversarial
Network GAN combined with neural network method, which is applied to the
identification of small samples of fossils. First of all, the generator
of GAN is fully trained, using it to generate a large number of samples
to expand the dataset, enriching the image features extracted by the
model, and then through the neural network to analyze the image
abstraction computation, and finally the best fossil identification
model is trained through multiple iterations. Using the method of this
paper on the same dataset with a data enhancement method for comparison
experiments, the experimental results show that the accuracy rate
reaches 91.3% in the case of rounds 20, higher than the other
experimental results, and has a significant advantage in the recognition
of fossils with scarce samples.13 Nov 2024Submitted to Ecology and Evolution 22 Nov 2024Submission Checks Completed
22 Nov 2024Assigned to Editor
05 Dec 2024Reviewer(s) Assigned
19 Dec 2024Review(s) Completed, Editorial Evaluation Pending
03 Jan 2025Editorial Decision: Revise Minor