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Deep Neural Networks for Hierarchical Taxonomic Fossil Classification of Carbonate Skeletal Grains

Authors :
Daniel J. Lehrmann
Sidhant Idgunji
Jonathan L. Payne
Madison Ho
Ardiansyah Koeshidayatullah
Michele Morsilli
Khalid Al-Ramadan
Publication Year :
2021
Publisher :
Copernicus GmbH, 2021.

Abstract

The growing digitization of fossil images has vastly improved and broadened the potential application of big data and machine learning, particularly computer vision, in paleontology. Recent studies show that machine learning is capable of approaching human abilities of classifying images, and with the increase in computational power and visual data, it stands to reason that it can match human ability but at much greater efficiency in the near future. Here we demonstrate this potential of using deep learning to identify skeletal grains at different levels of the Linnaean taxonomic hierarchy. Our approach was two-pronged. First, we built a database of skeletal grain images spanning a wide range of animal phyla and classes and used this database to train the model. We used a Python-based method to automate image recognition and extraction from published sources. Second, we developed a deep learning algorithm that can attach multiple labels to a single image. Conventionally, deep learning is used to predict a single class from an image; here, we adopted a Branch Convolutional Neural Network (B-CNN) technique to classify multiple taxonomic levels for a single skeletal grain image. Using this method, we achieved over 90% accuracy for both the coarse, phylum-level recognition and the fine, class-level recognition across diverse skeletal grains (6 phyla and 15 classes). Furthermore, we found that image augmentation improves the overall accuracy. This tool has potential applications in geology ranging from biostratigraphy to paleo-bathymetry, paleoecology, and microfacies analysis. Further improvement of the algorithm and expansion of the training dataset will continue to narrow the efficiency gap between human expertise and machine learning.

Details

Database :
OpenAIRE
Accession number :
edsair.doi...........e4e90bab55fbba45f95727b712ec8bac
Full Text :
https://doi.org/10.5194/egusphere-egu21-16394