Under Pressure: Predicting pressure on micro CT-scans of archaeological soil samples using convolutional neural networks
Summary
In order to protect buried archaeological remains from the pressure of build sites, it is
important to assess how this pressure affects the remains. To aid this assessment we answer
the question: Can we use convolutional neural networks (CNN) to predict the pressure that
was applied to archaeological soil samples scanned by a micro CT-scanner? The dataset used
in this study was created by repeatedly scanning a single, artifact rich soil sample. With each
scan, an increasing amount of pressure is applied to the sample, damaging the artifacts. The
soil sample was scanned by a micro CT-scanner. The amount pressure applied serves as the
label, in the machine learning process while the images (slices from the 3D scan) from the
various samples serve as input. A convolutional neural network making use of transfer
learning, tries to predict the pressure belonging to the images when the image is fed as input.
The test results on 261 unseen images after training the model show a 99.61% correct
prediction rate. The results are very promising, but since the model was trained on a very
specific dataset, they are not representative for a more general prediction of pressure applied
to archaeological soil samples.