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Neural networks and the classification of mineralogical samples using x-ray spectra

机译:神经网络和使用X射线光谱对矿物样品进行分类

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摘要

The automatic classification of large numbers of mineral samples is a practical problem in mining research. A system currently in use is based on simple statistical tests. Although the system performs well under typical conditions, the data collection procedure can be very time-consuming. This time can be significantly reduced, but at a cost of introducing noise into the data, leading to a degradation in classification performance. This paper reports on an initial investigation into the application of neural network techniques to the mineral identification task, and compares the performance of these methods to the current system. The results are very encouraging and suggest that a more powerful classifier might allow die data collection process to be significantly sped up without significant loss of classification accuracy for the overall system.
机译:大量矿物样品的自动分类是采矿研究中的一个实际问题。当前使用的系统基于简单的统计测试。尽管系统在典型条件下运行良好,但数据收集过程可能非常耗时。可以显着减少此时间,但是要付出将噪声引入数据中的代价,从而导致分类性能下降。本文报告了对神经网络技术在矿物识别任务中的应用的初步调查,并将这些方法的性能与当前系统进行了比较。结果非常令人鼓舞,并且表明功能更强大的分类器可以大大加快模具数据收集过程的速度,而不会显着降低整个系统的分类精度。

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