Abstract

Hyperspectral images (HS) are collected images of earth's surface over hundreds of narrow and close together spectral bands. This type of image should to be compressed because of the high between bands correlation and transmission of a very high amount of storage. There are different methods for compressing in the spatial or spectrum space that can be lossy or lossless. But it should be considered that in the field of remote sensing spectral data in hyperspectral images is more important than spatial data, so the compression should be performed somehow the spectral information of these images is well preserved. Our proposed method in this paper is a lossy compression technique that is based on the use of the curve fitting. It is recognized that the compression method using curve fitting has very good performance compared to other methods such as the principal component analysis (PCA). In this method, the spectral signature of each pixel from the original data is smoothed by using Savitzky-Golay smoothing filter with the most appropriate window size and smoothing polynomial grade, then a rational curve with the best degrees of numerator and denominator polynomials. Coefficients of the numerator and denominator of this function are considered as new features and thus the original data is compressed well. The results indicate that compressed data after recovery has a very close resemblance to the original data.

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