Hyperspectral Image Compression Using Implicit Neural Representation
Shima Rezasoltani, Faisal Z. Qureshi
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Hyperspectral images, which record the electromagnetic spectrum for a pixel in the image of a scene, often store hundreds of channels per pixel and contain an order of magnitude more information than a typical similarly-sized color image. Consequently, concomitant with the decreasing cost of capturing these images, there is a need to develop efficient techniques for storing, transmitting, and analyzing hyperspectral images. This paper develops a method for hyperspectral image compression using implicit neural representations where a multilayer perceptron network _ with sinusoidal activation functions ``learns'' to map pixel locations to pixel intensities for a given hyperspectral image I. _ thus acts as a compressed encoding of this image. The original image is reconstructed by evaluating _ at each pixel location. We have evaluated our method on four benchmarks -- Indian Pines, Cuprite, Pavia University, and Jasper Ridge -- and we show the proposed method achieves better compression than JPEG, JPEG2000, and PCA-DCT at low bitrates.