An autoencoder architecture was adopted for near-infrared
(NIR)
spectral analysis by extracting the common features in the spectra.
Three autoencoder-based networks with different purposes were constructed.
First, a spectral encoder was established by training the network
with a set of spectra as the input. The features of the spectra can
be encoded by the nodes in the bottleneck layer, which in turn can
be used to build a sparse and robust model. Second, taking the spectra
of one instrument as the input and that of another instrument as the
reference output, the common features in both spectra can be obtained
in the bottleneck layer. Therefore, in the prediction step, the spectral
features of the second can be predicted by taking the reverse of the
decoder as the encoder. Furthermore, transfer learning was used to
build the model for the spectra of more instruments by fine-tuning
the trained network. NIR datasets of plant, wheat, and pharmaceutical
tablets measured on multiple instruments were used to test the method.
The multi-linear regression (MLR) model with the encoded features
was found to have a similar or slightly better performance in prediction
compared with the partial least-squares (PLS) model.
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