Deep-sea Nodule Mineral Image Segmentation Algorithm Based on Pix2PixHD
Document Type
Article
Publication Date
1-1-2022
Abstract
Deep-sea mineral image segmentation plays an important role in deep-sea mining and underwater mineral resource monitoring and evaluation. The application of artificial intelligence technology to deep-sea mining projects can effectively improve the quality and efficiency of mining. The existing deep learning-based underwater image segmentation algorithms have problems such as the accuracy rate is not high enough and the running time is slightly longer. In order to improve the segmentation performance of underwater mineral images, this paper uses the Pix2PixHD (Pixel to Pixel High Definition) algorithm based on Conditional Generative Adversarial Network (CGAN) to segment deep-sea mineral images. The model uses a coarse-to-fine generator composed of a global generation network and two local enhancement networks, and multiple multi-scale discriminators with same network structures but different input pictures to generate high-quality images. The test results on the deep-sea mineral datasets show that the Pix2PixHD algorithm can identify more target minerals under certain other conditions. The evaluation index shows that the Pix2PixHD algorithm effectively improves the accuracy rate and the recall rate of deep-sea mineral image segmentation compared with the CGAN algorithm and the U-Net algorithm. It is important for expanding the application of deep learning techniques in the field of deep-sea exploration and mining.
Identifier
85130153075 (Scopus)
Publication Title
Computers Materials and Continua
External Full Text Location
https://doi.org/10.32604/cmc.2022.027213
e-ISSN
15462226
ISSN
15462218
First Page
1449
Last Page
1462
Issue
1
Volume
73
Grant
MESTA-2020-B001
Fund Ref
Minzu University of China
Recommended Citation
Song, Wei; Wang, Haolin; Zhang, Xinping; Xia, Jianxin; Liu, Tongmu; and Shi, Yuxi, "Deep-sea Nodule Mineral Image Segmentation Algorithm Based on Pix2PixHD" (2022). Faculty Publications. 3535.
https://digitalcommons.njit.edu/fac_pubs/3535