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Self-Supervised Learning for Seismic Image Segmentation From Few-Labeled Samples

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Author(s):
Monteiro, Bruno A. A. ; Oliveira, Hugo ; dos Santos, Jefersson A.
Total Authors: 3
Document type: Journal article
Source: IEEE Geoscience and Remote Sensing Letters; v. 19, p. 5-pg., 2022-01-01.
Abstract

Current deep learning methods for interpreting seismic images require large amounts of labeled data, and due to strategic and economic interests, these data are not plenty available. In this scenario, seismic interpretation can benefit from self-supervised learning (SSL) by relying on prior training without manually annotated labels within the target data domain and subsequent fine-tuning with few shots. To demonstrate the potential of such an approach, we conducted experiments with three classic context-based pretext tasks: rotation, jigsaw, and frame order prediction. Our results for 1, 5, 10, and 20 shots showed significant improvement for mean Intersection-over-Union (mIoU) measurements for semantic segmentation in most scenarios, outperforming the baseline method in 38% in the one-shot scenario for the F3 Netherlands Dataset and 16.4% in the New Zealand Parihaka dataset, and this gap grows even higher after performing ensemble modeling. These experiments suggest that applying SSL methods can also bring great benefits in seismic interpretation when few labeled data are available. (AU)

FAPESP's process: 20/06744-5 - Deep learning and intermediate representations for pediatric image analysis
Grantee:Hugo Neves de Oliveira
Support Opportunities: Scholarships in Brazil - Post-Doctoral
FAPESP's process: 15/22308-2 - Intermediate representations in Computational Science for knowledge discovery
Grantee:Roberto Marcondes Cesar Junior
Support Opportunities: Research Projects - Thematic Grants