Abstract

For geochemical analysis such as stable isotope ratio, radiocarbon dating and minor element analysis for a single species of microfossils, a large number of specimens, is required. Collecting specimens one by one under a microscope requires enormous time and effort. In this study, we developed a device that automates these efforts and can be used without expert knowledge. Microfossils can be accurately classified and identified to taxonomic species level using deep learning, which is one of the learning methods of artificial intelligence (AI), and picked up using a micromanipulator installed in the microscope with an automated motorized X-Y stage. A prototype of the classification model AI-PIC_20181024 showed the ability to classify microfossil species Cycladophora davisiana and Actinomma boreale (radiolarians) with accuracy exceeding 90% at a confidence level > 0.90. Using this method, it is possible to collect a large number of particles with speed and accuracy that cannot be achieved by a human technician. Although this technology can only be used for specific species of microfossils, it greatly reduces the hand work of picking and also enables chemical analysis, such as isotope ratio and minor element analysis, for small microfossil species for which it had been difficult to collect enough specimens. In addition to microfossils, this technology can be applied to other particles, with applications expected in various fields, such as medical, food, horticulture, and materials.

Highlights

  • Stable isotope ratio, radiocarbon dating, and minor elemental analyses of a single species of foraminifera, which is a group of microfossils, require a large number of specimens

  • Operation processes of the system including model construction, classification, picking, and collection were checked with radiolarian fossils in deep-sea sediment

  • An automated microfossil pick-up system with implementation of artificial intelligence (AI) technology was newly developed, and results of a practical test of this system confirm the practical use of a classification model with sufficiently high accuracy

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Summary

Introduction

Radiocarbon dating, and minor elemental analyses of a single species of foraminifera, which is a group of microfossils, require a large number of specimens. One solution is to use a micro particle accumulator with a micromanipulator along with. The micro particle accumulator can distinguish mineral particles by conventional machine learning (Isozaki et al, 2018), but it has not yet been possible to accurately classify microfossils of delicate and complicated forms. AI using deep learning methods has been used for distinguishing objects appearing in images. Deep learning has been used to classify volcanic ash particles (Shoji et al, 2018) and foraminiferal tests (Mitra et al, 2019). In these previous methods, a large number of microscopic images first needed to be collected

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