Machine Learning Sorts Ancient Pottery Fragments

News May 19, 2021

(Chris Downum)
SHARE:
Tusayan Sherds
(Chris Downum)

FLAGSTAFF, ARIZONA—According to a statement released by Northern Arizona University, researchers Leszek Pawlowicz and Chris Downum used a form of machine learning known as Convolutional Neural Networks (CNNs) to sort pottery fragments into stylistic categories. Different types of pottery can be correlated with different groups of people and time periods, and therefore provide valuable information about archaeological sites. But identifying these pottery types by hand is time-consuming. Pawlowicz and Downum first collected thousands of digital photographs of examples of fragments of Tusayan White Ware, which is often found in northeastern Arizona, and asked experts to classify each photograph by its type of pottery design. These photographs were then used to “train” a computer to learn pottery types. Pawlowicz said that the computer was eventually able to identify pottery types, sometimes with greater accuracy than the human experts. The machine was also able to create color-coded maps to show which design features on a pottery fragment were used to make a classification. This information was then used to sort though the images and find the pieces that were most similar to each other, which may eventually facilitate the reconstruction of ancient vessels, or the identification of stylistic similarities across communities. To read about how researchers used technology to identify how many hands contributed to the writing of 2,700-year-old Hebrew inscriptions, go to "Reading, Writing, and Algorithms."

  • Features March/April 2021

    The Visigoths' Imperial Ambitions

    How an unlikely Visigothic city rose in Spain amid the chaotic aftermath of Rome’s final collapse

    Read Article
    Yil Dori
  • Letter from Chihuahua March/April 2021

    Cliff Dwellers of the Sierra Madre

    A recurring design motif found in northern Mexico’s ancient mountain villages reflects complex cultural ties between distant peoples

    Read Article
    (Photo by Stephen H. Lekson)
  • Artifacts March/April 2021

    Subeixi Game Balls

    Read Article
    (Courtesy Patrick Wertmann)
  • Digs & Discoveries March/April 2021

    An Enduring Design

    Read Article
    Courtesy Durham University