TraCEr, Laboratory for Traceology and Controlled Experiments at MONREPOS Archaeological Research Centre and Museum for Human Behavioural Evolution, RGZM, Neuwied, Germany.
School of Life Sciences, University of Bradford, Bradford, West Yorkshire, United Kingdom.
PLoS One. 2020 Dec 3;15(12):e0243295. doi: 10.1371/journal.pone.0243295. eCollection 2020.
Metrology has been successfully used in the last decade to quantify use-wear on stone tools. Such techniques have been mostly applied to fine-grained rocks (chert), while studies on coarse-grained raw materials have been relatively infrequent. In this study, confocal microscopy was employed to investigate polished surfaces on a coarse-grained lithology, quartzite. Wear originating from contact with five different worked materials were classified in a data-driven approach using machine learning. Two different classifiers, a decision tree and a support-vector machine, were used to assign the different textures to a worked material based on a selected number of parameters (Mean density of furrows, Mean depth of furrows, Core material volume-Vmc). The method proved successful, presenting high scores for bone and hide (100%). The obtained classification rates are satisfactory for the other worked materials, with the only exception of cane, which shows overlaps with other materials. Although the results presented here are preliminary, they can be used to develop future studies on quartzite including enlarged sample sizes.
计量学在过去十年中成功地用于量化石器上的使用痕迹。这些技术主要应用于细粒岩石(燧石),而对粗粒原材料的研究相对较少。在这项研究中,共聚焦显微镜被用于研究一种粗粒岩性——石英岩的抛光表面。使用机器学习的方法,对源自与五种不同加工材料接触的磨损进行了数据驱动的分类。两种不同的分类器,决策树和支持向量机,用于根据选定的参数数量(沟痕的平均密度、沟痕的平均深度、核心材料体积-Vmc)将不同的纹理分配给加工材料。该方法被证明是成功的,对骨头和皮革(100%)的分类得分很高。对于其他加工材料,获得的分类率也令人满意,只有藤条是个例外,它与其他材料有重叠。虽然这里呈现的结果是初步的,但它们可以用于未来对石英岩的研究,包括扩大样本量。