基于多层卷积参数整定的地质火成岩分类

A. Nursikuwagus, R. Munir, Masayu Leylia Khodra
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引用次数: 1

摘要

提出了一种框架不同的CNN来解决图像分类问题。CNN的力量和提取要求特征的能力必须成为提出新想法的目标。在地质领域,确定火山喷发火成岩的问题,从岩石的位置进行勘探时,往往在分类上形成对比。这些领域问题必须得到解决,考虑到一致性和加速岩石分类。CNN曾经通过在多层卷积中展开来解决这个问题。此外,为了提高CNN模型的精度,还采用了参数整定的方法。该研究利用了许多参数调整,如重新缩放,裁剪,大小不准确的过滤器预测。探索表明,CNN(64,5)的准确率高达98.9%,验证的准确率为81.1%。这项研究已经证实,枚举调整参数的重新缩放和裁剪并不能提高精度,即使修改过滤器的大小和步幅。一些结果表明,仍有一个不准确的类别,特别是在闪长岩和石灰岩中。41幅闪长岩和50幅灰岩的预测误差分别为31.7%和30%。(抽象)
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multilayer Convolutional Parameter Tuning based Classification for Geological Igneous Rocks
A framework different CNN has been proposed to solve image classification. The power of CNN and the ability to extract demanding features has to be a target for proposed the new ideas. In the geology domain, issues in ascertaining igneous rock from volcanic eruptions often contrast in classification when explored from the location of the rocks. These domain problems must be resolved, contemplating to have consistency and accelerate rock classification. CNN has used to figure out the problem by expanding in multilayer convolution. Besides, parameter tuning has anointed to get the high accuracy to enhance the CNN model. This study has exploited many parameters tuning such as rescaling, cropping, size of inaccurate filter prediction. The exploration has shown that CNN(64,5) achieves a high accuracy of 98.9% and validation carries out accuracy of 81.1%. This study has confirmed that enumerating the tuning parameter on rescaling and cropping does not boost accuracy, even modifying the filter size and stride. Some results have shown still have an inaccuracy class, specifically in the diorite and limestone. The error forecast is 31.7% of 41 predicted diorite images and 30% of 50 predicted limestone images, respectively. (Abstract)
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