DOAJ Open Access 2020

Task-Driven Learned Hyperspectral Data Reduction Using End-to-End Supervised Deep Learning

Mathé T. Zeegers Daniël M. Pelt Tristan van Leeuwen Robert van Liere Kees Joost Batenburg

Abstrak

An important challenge in hyperspectral imaging tasks is to cope with the large number of spectral bins. Common spectral data reduction methods do not take prior knowledge about the task into account. Consequently, sparsely occurring features that may be essential for the imaging task may not be preserved in the data reduction step. Convolutional neural network (CNN) approaches are capable of learning the specific features relevant to the particular imaging task, but applying them directly to the spectral input data is constrained by the computational efficiency. We propose a novel supervised deep learning approach for combining data reduction and image analysis in an end-to-end architecture. In our approach, the neural network component that performs the reduction is trained such that image features most relevant for the task are preserved in the reduction step. Results for two convolutional neural network architectures and two types of generated datasets show that the proposed Data Reduction CNN (DRCNN) approach can produce more accurate results than existing popular data reduction methods, and can be used in a wide range of problem settings. The integration of knowledge about the task allows for more image compression and higher accuracies compared to standard data reduction methods.

Penulis (5)

M

Mathé T. Zeegers

D

Daniël M. Pelt

T

Tristan van Leeuwen

R

Robert van Liere

K

Kees Joost Batenburg

Format Sitasi

Zeegers, M.T., Pelt, D.M., Leeuwen, T.v., Liere, R.v., Batenburg, K.J. (2020). Task-Driven Learned Hyperspectral Data Reduction Using End-to-End Supervised Deep Learning. https://doi.org/10.3390/jimaging6120132

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Informasi Jurnal
Tahun Terbit
2020
Sumber Database
DOAJ
DOI
10.3390/jimaging6120132
Akses
Open Access ✓