Seismic image identification and detection based on Tchebichef moment invariant

Date published

2023-08-31

Free to read from

Supervisor/s

Journal Title

Journal ISSN

Volume Title

Publisher

MDPI

Department

Type

Article

ISSN

2079-9292

Format

Citation

Lu A, Honarvar Shakibaei Asli B. (2023) Seismic image identification and detection based on Tchebichef moment invariant. Electronics, Volume 12, Issue 17, August 2023, Article number 3692

Abstract

The research focuses on the analysis of seismic data, specifically targeting the detection, edge segmentation, and classification of seismic images. These processes are fundamental in image processing and are crucial in understanding the stratigraphic structure and identifying oil and natural gas resources. However, there is a lack of sufficient resources in the field of seismic image detection, and interpreting 2D seismic image slices based on 3D seismic data sets can be challenging. In this research, image segmentation involves image preprocessing and the use of a U-net network. Preprocessing techniques, such as Gaussian filter and anisotropic diffusion, are employed to reduce blur and noise in seismic images. The U-net network, based on the Canny descriptor is used for segmentation. For image classification, the ResNet-50 and Inception-v3 models are applied to classify different types of seismic images. In image detection, Tchebichef invariants are computed using the Tchebichef polynomials’ recurrence relation. These invariants are then used in an optimized multi-class SVM network for detecting and classifying various types of seismic images. The promising results of the SVM model based on Tchebichef invariants suggest its potential to replace Hu moment invariants (HMIs) and Zernike moment invariants (ZMIs) for seismic image detection. This approach offers a more efficient and dependable solution for seismic image analysis in the future.

Description

Software Description

Software Language

Github

Keywords

seismic images, moment functions, moment invariants, Tchebichef moments, image enhancement

DOI

Rights

Attribution 4.0 International

Relationships

Relationships

Resources

Funder/s