Results 1 to 10 of about 33,183 (267)
Some of the next articles are maybe not open access.

Rethinking Compressive Sensing

2018 26th European Signal Processing Conference (EUSIPCO), 2018
In this paper we show that Compressive Sensing (CS) can be casted as an impulse response estimation problem. Using this interpretation we re-obtain some theoretical results of CS in a simple manner. Moreover, we prove that in the case of a randomly generated sensing matrix, reconstruction probability depends on the kurtosis of the distribution used for
openaire   +2 more sources

On Compressive orthonormal Sensing

2016 54th Annual Allerton Conference on Communication, Control, and Computing (Allerton), 2016
The Compressive Sensing (CS) approach for recovering sparse signal with orthonormal measurements has been studied under various notions of coherence. However, existing notions of coherence either do not exploit the structure of the underlying signal, or are too complicated to provide an explicit sampling scheme for all orthonormal basis sets ...
Yi Zhou 0017   +2 more
openaire   +1 more source

Near-Optimal Compression for Compressed Sensing

2015 Data Compression Conference, 2015
In this note we study the under-addressed quantization stage implicit in any compressed sensing signal acquisition paradigm. We also study the problem of compressing the bit-stream resulting from the quantization. We propose using Sigma-Delta (a#x03A3;a#x0394;) quantization followed by a compression stage comprised of a discrete Johnson-Linden Strauss ...
Rayan Saab   +2 more
openaire   +1 more source

Spatiotemporal compressed sensing for video compression

2017 IEEE 60th International Midwest Symposium on Circuits and Systems (MWSCAS), 2017
We present a hardware-friendly spatiotemporal compressed sensing framework for video compression. The spatiotemporal compressed sensing incorporates random sampling in both spatial and temporal domain to encode the video scene into a single coded image. During decoding, the video is reconstructed using dictionary learning and sparse recovery.
Tao Xiong   +6 more
openaire   +1 more source

Using compression codes in compressed sensing

2016 IEEE Information Theory Workshop (ITW), 2016
Data compression and compressed sensing algorithms exploit the structure present in a signal for its efficient representation and measurement, respectively. While most state-of-the-art data compression codes take advantage of complex patterns present in signals of interest, this is not the case in compressed sensing.
Farideh Ebrahim Rezagah   +3 more
openaire   +1 more source

Compressing YOLO Network by Compressive Sensing

2017 4th IAPR Asian Conference on Pattern Recognition (ACPR), 2017
Object detection is one of the fundamental challenges in pattern recognition community. Recently, convolutional neural networks (CNN) are increasingly exploited in object detection, showing their promising potentials of generatively discovering patterns from quantity of labeled images.
Yirui Wu   +3 more
openaire   +1 more source

Compressive sensing for space image compressing

Proceedings of the 2016 International Conference on Intelligent Information Processing, 2016
Compressive sensing is a new technique by which sparse signals are sampled and recovered from a few measurements. To address the disadvantages of traditional space image compressing methods, a complete new compressing scheme under the compressive sensing framework was developed in this paper.
Zheng Li   +3 more
openaire   +2 more sources

Compressive sensing

2008 42nd Annual Conference on Information Sciences and Systems, 2008
openaire   +1 more source

Terahertz compressed sensing imaging based on line array detection

Optics and Lasers in Engineering, 2023
Xiaoxue Hu, Zehui Lu, Sixing Xi
exaly  

Image encryption based on compressed sensing and DNA encoding

Signal Processing: Image Communication, 2021
Yining Su
exaly  

Home - About - Disclaimer - Privacy