TL;DR
This study develops a deep learning-based classifier for microfacies analysis, achieving high accuracy in identifying fossils and abiotic grains, thus aiding sedimentologists and paleontologists by reducing manual effort.
Contribution
It introduces a transfer learning framework using deep convolutional neural networks for fossil and grain identification in microfacies analysis, demonstrating high accuracy and efficiency.
Findings
Achieved up to 95% top-1 accuracy with Inception ResNet v2.
Demonstrated 0.99 precision in mineral identification.
High reproducibility and bias avoidance comparable to human classifiers.
Abstract
Petrographic analysis based on microfacies identification in thin sections is widely used in sedimentary environment interpretation and paleoecological reconstruction. Fossil recognition from microfacies is an essential procedure for petrographers to complete this task. Distinguishing the morphological and microstructural diversity of skeletal fragments requires extensive prior knowledge of fossil morphotypes in microfacies and long training sessions under the microscope. This requirement engenders certain challenges for sedimentologists and paleontologists, especially novices. However, a machine classifier can help address this challenge. In this study, we collected a microfacies image dataset comprising both public data from 1,149 references and our own materials (including 30,815 images of 22 fossil and abiotic grain groups). We employed a high-performance workstation to implement…
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Taxonomy
MethodsAverage Pooling · 1x1 Convolution · Kaiming Initialization · Global Average Pooling · Batch Normalization · Residual Connection · *Communicated@Fast*How Do I Communicate to Expedia? · Max Pooling · Residual Block · Convolution
