Adaptive compressed sensing for wireless image sensor networks

Compressed sensing (CS) based image compression can achieve a very low sampling rate, which is ideal for wireless sensor networks with respect to their energy consumption and data transmission. In this paper, an adaptive compressed sensing rate assignment algorithm that is based on the standard deviations of image blocks is proposed. Specifically, each image block is first assigned a fixed sampling rate. In addition to the fixed sampling rate, an adaptive sampling rate is then given to each block based on the standard deviation of the block. With this adaptive sampling strategy, higher sampling rates are assigned to blocks that are less compressible (e.g., blocks with complex textures are less compressible than blocks with a smooth background). The sensing matrix is constructed based on the assigned sampling rate. The fixed measurements and the adaptive measurements are concatenated to form the final measurements. Finally, the measurements are used to reconstruct the image on the decoding side. The experimental results demonstrate that the proposed algorithm can achieve image progressive transmission and improve the reconstruction quality of the images.

[1]  QU Guang-cai,et al.  Image Adaptive Coding Algorithm Based on Compressive Sensing , 2012 .

[2]  S. Frick,et al.  Compressed Sensing , 2014, Computer Vision, A Reference Guide.

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

[4]  Chen Chen,et al.  Single-image super-resolution using multihypothesis prediction , 2012, 2012 Conference Record of the Forty Sixth Asilomar Conference on Signals, Systems and Computers (ASILOMAR).

[5]  Luigi Ferrigno,et al.  Balancing computational and transmission power consumption in wireless image sensor networks , 2005, IEEE Symposium on Virtual Environments, Human-Computer Interfaces and Measurement Systems, 2005..

[6]  James E. Fowler,et al.  Block compressed sensing of images using directional transforms , 2009, 2009 16th IEEE International Conference on Image Processing (ICIP).

[7]  Hao Liu,et al.  Dense depth image synthesis via energy minimization for three-dimensional video , 2015, Signal Process..

[8]  Yang Shuyuan,et al.  Block-Based Adaptive Compressed Sensing of Image Using Texture Information , 2013 .

[9]  Chen Chen,et al.  Compressed-sensing recovery of images and video using multihypothesis predictions , 2011, 2011 Conference Record of the Forty Fifth Asilomar Conference on Signals, Systems and Computers (ASILOMAR).

[10]  Bülent Tavli,et al.  A survey of visual sensor network platforms , 2012, Multimedia Tools and Applications.

[11]  Yue Gao,et al.  Cross-View Down/Up-Sampling Method for Multiview Depth Video Coding , 2012, IEEE Signal Processing Letters.

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

[13]  Xu Wang,et al.  A bundled-optimization model of multiview dense depth map synthesis for dynamic scene reconstruction , 2015, Inf. Sci..

[14]  Junguo Zhang,et al.  Simulation and Research on Data  Fusion Algorithm of the Wireless Sensor Network Based on NS2 , 2009, 2009 WRI World Congress on Computer Science and Information Engineering.

[15]  Chen Chen,et al.  Spectral–Spatial Preprocessing Using Multihypothesis Prediction for Noise-Robust Hyperspectral Image Classification , 2014, IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing.

[16]  Li Yu,et al.  Depth map reconstruction and rectification through coding parameters for mobile 3D video system , 2015, Neurocomputing.

[17]  Junguo Zhang,et al.  A Wildlife Monitoring System Based on Wireless Image Sensor Networks , 2014 .

[18]  Jian Zhang,et al.  Image compressive sensing recovery using adaptively learned sparsifying basis via L0 minimization , 2014, Signal Process..

[19]  Lu Gan Block Compressed Sensing of Natural Images , 2007, 2007 15th International Conference on Digital Signal Processing.

[20]  Meng-Ru Luo,et al.  Adaptive Wavelet Packet Image Compressed Sensing: Adaptive Wavelet Packet Image Compressed Sensing , 2014 .

[21]  Ian F. Akyildiz,et al.  Wireless sensor networks: a survey , 2002, Comput. Networks.

[22]  Xu Wang,et al.  A multi-dimensional image quality prediction model for user-generated images in social networks , 2014, Inf. Sci..