Distributed Compressive Hyperspectral Image Sensing

A novel compression framework called distributed compressed hyper spectral image sensing (DCHIS) is proposed in this paper. In our framework, the random measurements of each spectral band are obtained using compressed sensing (CS) encoding independently at the encoder. At the decoder, a new reconstruction algorithm with the proposed initialization and stopping criterion is applied to reconstruct the non-key frames with the assistance of the estimated side information, which is derived from the previous reconstructed key frames using the prediction method. Experimental results show that the proposed algorithm not only improves the reconstruction quality, but also increases convergence rate. Our algorithm has a very low-complexity encoder and is hardware friendly.

[1]  Emmanuel J. Candès,et al.  Near-Optimal Signal Recovery From Random Projections: Universal Encoding Strategies? , 2004, IEEE Transactions on Information Theory.

[2]  Catarina Brites,et al.  Studying Temporal Correlation Noise Modeling for Pixel Based Wyner-Ziv Video Coding , 2006, 2006 International Conference on Image Processing.

[3]  John F. Arnold,et al.  The lossless compression of AVIRIS images by vector quantization , 1997, IEEE Trans. Geosci. Remote. Sens..

[4]  Emmanuel J. Candès,et al.  Robust uncertainty principles: exact signal reconstruction from highly incomplete frequency information , 2004, IEEE Transactions on Information Theory.

[5]  Jarno Mielikäinen,et al.  Clustered DPCM for the lossless compression of hyperspectral images , 2003, IEEE Trans. Geosci. Remote. Sens..

[6]  Mário A. T. Figueiredo,et al.  Gradient Projection for Sparse Reconstruction: Application to Compressed Sensing and Other Inverse Problems , 2007, IEEE Journal of Selected Topics in Signal Processing.

[7]  Jing Zhang,et al.  A Novel Lossless Compression for Hyperspectral Images by Context-Based Adaptive Classified Arithmetic Coding in Wavelet Domain , 2007, IEEE Geoscience and Remote Sensing Letters.

[8]  David L Donoho,et al.  Compressed sensing , 2006, IEEE Transactions on Information Theory.

[9]  Richard G. Baraniuk,et al.  Distributed Compressed Sensing Dror , 2005 .

[10]  E.J. Candes Compressive Sampling , 2022 .

[11]  Trac D. Tran,et al.  Fast compressive imaging using scrambled block Hadamard ensemble , 2008, 2008 16th European Signal Processing Conference.

[12]  Jing Zhang,et al.  A Novel Lossless Compression for Hyperspectral Images by Adaptive Classified Arithmetic Coding in Wavelet Domain , 2006, 2006 International Conference on Image Processing.

[13]  J. Romberg,et al.  Imaging via Compressive Sampling , 2008, IEEE Signal Processing Magazine.