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基于神经网络的机器学习虚拟剥片的概念验证。

A proof of concept for machine learning-based virtual knapping using neural networks.

机构信息

Department of Early Prehistory and Quaternary Ecology, University of Tübingen, Tübingen, Germany.

Technological Primates Research Group, Max Planck Institute for Evolutionary Anthropology, Leipzig, Germany.

出版信息

Sci Rep. 2021 Oct 7;11(1):19966. doi: 10.1038/s41598-021-98755-6.

Abstract

Prehistoric stone tools are an important source of evidence for the study of human behavioural and cognitive evolution. Archaeologists use insights from the experimental replication of lithics to understand phenomena such as the behaviours and cognitive capacities required to manufacture them. However, such experiments can require large amounts of time and raw materials, and achieving sufficient control of key variables can be difficult. A computer program able to accurately simulate stone tool production would make lithic experimentation faster, more accessible, reproducible, less biased, and may lead to reliable insights into the factors that structure the archaeological record. We present here a proof of concept for a machine learning-based virtual knapping framework capable of quickly and accurately predicting flake removals from 3D cores using a conditional adversarial neural network (CGAN). We programmatically generated a testing dataset of standardised 3D cores with flakes knapped from them. After training, the CGAN accurately predicted the length, volume, width, and shape of these flake removals using the intact core surface information alone. This demonstrates the feasibility of machine learning for investigating lithic production virtually. With a larger training sample and validation against archaeological data, virtual knapping could enable fast, cheap, and highly-reproducible virtual lithic experimentation.

摘要

史前石器是研究人类行为和认知进化的重要证据来源。考古学家利用石器复制实验的见解来理解制造石器所需的行为和认知能力等现象。然而,此类实验可能需要大量的时间和原材料,并且难以实现关键变量的充分控制。能够准确模拟石器生产的计算机程序将使石器实验更快、更容易获得、可重复、偏差更小,并可能为深入了解构成考古记录的因素提供可靠的见解。我们在此提出了一个基于机器学习的虚拟敲击框架的概念验证,该框架能够使用条件对抗神经网络(CGAN)快速准确地预测从 3D 核心中去除的薄片。我们通过编程生成了一个带有从其敲击出薄片的标准化 3D 核心的测试数据集。在训练后,CGAN 仅使用完整核心表面信息准确预测了这些薄片去除的长度、体积、宽度和形状。这证明了机器学习在虚拟研究石器生产方面的可行性。通过更大的训练样本和对考古数据的验证,虚拟敲击可以实现快速、廉价和高度可重复的虚拟石器实验。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8e4a/8497608/a44db0cd4915/41598_2021_98755_Fig1_HTML.jpg

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