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A Spectral Feature Based CNN Long Short-Term Memory Approach for Classification

机译:基于光谱特征的CNN长短期记忆分类方法

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This paper presents a Gaussian data augmentation-assisted deep learning using a convolutional neural network (PCA18+GDA100+CNN LSTM) on the analysis of the state-of-the-art infrared backscatter imaging spectroscopy (IBIS) images. Both PCA and data augmentation methods were used to preprocess classification input and predict with a comparable degree of accuracy. Initially, PCA was used to reduce the number of features. We used 18 principal components based of the cumulative variance, which totaled 99.92%. GDA was also used to increase the number of samples. CNN-LSTM (long short-term memory) was then used to perform multiclass classification on the IBIS hyperspectral image. Experiments were conducted and results were collected from the K-fold cross-validation with K=20. They were analyzed with a confusion matrix and the average accuracy is 99%.
机译:本文介绍了使用卷积神经网络(PCA18 + GDA100 + CNN LSTM)进行的高斯数据增强辅助深度学习,用于分析最新技术的红外背散射成像光谱(IBIS)图像。 PCA和数据扩充方法都用于预处理分类输入并以可比较的准确度进行预测。最初,使用PCA来减少功能部件的数量。我们使用了基于累积方差的18个主成分,总计为99.92%。 GDA还用于增加样品数量。然后,使用CNN-LSTM(长期短期记忆)对IBIS高光谱图像执行多类分类。进行实验,并从K = 20的K倍交叉验证中收集结果。使用混淆矩阵对其进行了分析,平均准确度为99%。

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