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Resumen de Quantitative Statistics and Identification of Tool‐Marks

Min Yang, Li Mou, Yi‐Ming Fu, Yu Wang, Jiangfeng Wang

  • This study was designed to establish a feature identification method of tool-mark 2D data. A uniform local binary pattern his-togram operator was developed to extract the tool-mark features, and the random forest algorithm was adopted to identify these. The presentedmethod was used to conduct five groups of experiments with a 2D dataset of known matched and nonmatched tool-marks made by bolt clip-pers, cutting pliers, and screwdrivers. The experimental results show that the proposed method achieved a high rate of identification of thetool-mark samples generated under identical conditions. The proposed method effectively overcomes the disadvantage of unstable illuminationof 2D tool-mark image data and avoids the difficulty in mark inspection caused by manually preset parameters in the existing methods, thusreducing the uncertainty of inspected results.


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