OutcropHyBNet: Hybrid Backbone Networks with Data Augmentation for Accurate Stratum Semantic Segmentation of Monocular Outcrop Images in Carbon Capture and Storage Applications
Author:
Madokoro Hirokazu1ORCID, Sato Kodai2, Nix Stephanie1ORCID, Chiyonobu Shun3, Nagayoshi Takeshi4, Sato Kazuhito2
Affiliation:
1. Faculty of Software and Information Science, Iwate Prefectural University, Takizawa 020-0693, Japan 2. Faculty of Systems Science and Technology, Akita Prefectural University, Yurihonjo 015-0055, Japan 3. Graduate School of International Resource Sciences, Akita University, Akita 010-8502, Japan 4. Faculty of Bioresource Sciences, Akita Prefectural University, Akita 010-0195, Japan
Abstract
The rapid advancement of climate change and global warming have widespread impacts on society, including ecosystems, water security, food production, health, and infrastructure. To achieve significant global emission reductions, approximately 74% is expected to come from cutting carbon dioxide (CO2) emissions in energy supply and demand. Carbon Capture and Storage (CCS) has attained global recognition as a preeminent approach for the mitigation of atmospheric carbon dioxide levels, primarily by means of capturing and storing CO2 emissions originating from fossil fuel systems. Currently, geological models for storage location determination in CCS rely on limited sampling data from borehole surveys, which poses accuracy challenges. To tackle this challenge, our research project focuses on analyzing exposed rock formations, known as outcrops, with the goal of identifying the most effective backbone networks for classifying various strata types in outcrop images. We leverage deep learning-based outcrop semantic segmentation techniques using hybrid backbone networks, named OutcropHyBNet, to achieve accurate and efficient lithological classification, while considering texture features and without compromising computational efficiency. We conducted accuracy comparisons using publicly available benchmark datasets, as well as an original dataset expanded through random sampling of 13 outcrop images obtained using a stationary camera, installed on the ground. Additionally, we evaluated the efficacy of data augmentation through image synthesis using Only Adversarial Supervision for Semantic Image Synthesis (OASIS). Evaluation experiments on two public benchmark datasets revealed insights into the classification characteristics of different classes. The results demonstrate the superiority of Convolutional Neural Networks (CNNs), specifically DeepLabv3, and Vision Transformers (ViTs), particularly SegFormer, under specific conditions. These findings contribute to advancing accurate lithological classification in geological studies using deep learning methodologies. In the evaluation experiments conducted on ground-level images obtained using a stationary camera and aerial images captured using a drone, we successfully demonstrated the superior performance of SegFormer across all categories.
Subject
Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry
Reference61 articles.
1. Intergovernmental Panel on Climate Change (IPCC) (2022). Climate Change 2021: Impacts, Adaptation, and Vulnerability, IPCC. Available online: https://www.ipcc.ch/report/ar6/wg2/. 2. More than unfamiliar environmental connection to super typhoon climatology;Kang;Sci. Rep.,2023 3. Carbon capture and storage (CCS): The way forward;Bui;Energy Environ. Sci.,2018 4. Technologies and Perspectives for Achieving Carbon Neutrality;Wang;Innovation,2021 5. Shreyash, N., Sonker, M., Bajpai, S., Tiwary, S.K., Khan, M.A., Raj, S., Sharma, T., and Biswas, S. (2021). The Review of Carbon Capture-Storage Technologies and Developing Fuel Cells for Enhancing Utilization. Energies, 14.
|
|