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Estimating the Temperature of Heat-exposed Bone via Machine Learning Analysis of SCI Color Values: A Pilot Study

机译:通过机器学习分析对SCI颜色值的机器学习分析估算热暴露骨的温度:试验研究

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Determining maximum heating temperatures of burnt bones is a long-standing problem in forensic science and archaeology. In this pilot study, controlled experiments were used to heat 14 fleshed and defleshed pig vertebrae (wet bones) and archaeological human vertebrae (dry bones) to temperatures of 400, 600, 800, and 1000 degrees C. Specular component included (SCI) color values were recorded from the bone surfaces with a Konica-Minolta cm-2600d spectrophotometer. These color values were regressed onto heating temperature, using both a traditional linear model and the k-nearest neighbor (k-NN) machine-learning algorithm. Mean absolute errors (MAE) were computed for 1000 rounds of temperature prediction. With the k-NN approach, the median MAE prediction errors were 41.6 degrees C for the entire sample, and 20.9 degrees C for the subsample of wet bones. These results indicate that spectrophotometric color measurements combined with machine learning methods can be a viable tool for estimating bone heating temperature.
机译:确定烧焦骨骼的最大加热温度是法医学和考古中的长期问题。在该试点研究中,控制实验用于加热14个肉体和防污猪椎骨(湿骨)和考古人椎骨(干骨)至400,600,800和1000摄氏度的温度。包括(SCI)颜色用konica-minolta cm-2600d分光光度计从骨表面记录值。使用传统的线性模型和K最近邻(K-NN)机器学习算法,将这些颜色值回归到加热温度上。计算平均误差(MAE)1000轮温度预测。通过K-NN方法,对于整个样品,中位数MAE预测误差为41.6摄氏度,对于湿骨的附带,为20.9摄氏度。这些结果表明,分光光度颜色测量与机器学习方法组合可以是用于估计骨加热温度的可行工具。

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