DOI: 10.3390/app16136309 ISSN: 2076-3417

Redundancy-Aware Analysis of Functional Complementarity in Seismic Attributes for Deep Facies Segmentation

Roberto Carlos Moreno-Hernández, Juan A. Moreno-Hernández, Margarita De la Portilla-Reynoso, Claudia del C. Gutiérrez-Torres, Juan G. Barbosa-Saldaña, Didier Samayoa, José A. Jiménez-Bernal

Seismic attribute selection remains a critical yet often heuristic component in deep learning-based segmentation workflows. In this work, we propose a redundancy-aware framework to systematically analyse the contribution of seismic attributes by combining input-space statistics, representational similarity (CKA), and error-based evaluation. Our results suggest that statistical redundancy in the input space does not directly translate to functional redundancy within the network. In particular, attributes such as amplitude and instantaneous phase may exhibit high similarity in the input space while producing distinct error patterns and meaningful performance gains. We further observe that complementary attributes do not necessarily yield additive improvements. While some combinations introduce conflicting interactions that limit global performance, others provide stable and consistent improvements across classes. Notably, the combination of amplitude, phase, and local variance forms a minimal informative subset that improves segmentation performance in a balanced manner, particularly in challenging facies. These findings suggest that attribute selection should be guided by functional complementarity and interaction stability rather than by input diversity alone. The proposed framework provides a principled approach for identifying effective attribute subsets, contributing to more efficient and interpretable seismic segmentation workflows.

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