Highly Reliable and Low-Complexity Image Compression Scheme Using Neighborhood Correlation Sequence Algorithm in WSN

Recently, the advancements in the field of wireless technologies and micro-electro-mechanical systems lead to the development of potential applications in wireless sensor networks (WSNs). The visual sensors in WSN create a significant impact on computer vision based applications such as pattern recognition and image restoration. generate a massive quantity of multimedia data. Since transmission of images consumes more computational resources, various image compression techniques have been proposed. But, most of the existing image compression techniques are not applicable for sensor nodes due to its limitations on energy, bandwidth, memory, and processing capabilities. In this article, we introduce a highly reliable and low-complexity image compression scheme using neighborhood correlation sequence (NCS) algorithm. The NCS algorithm performs the bit reduction operation and then encoded by a codec (such as PPM, Deflate, and Lempel Ziv Markov chain algorithm.) to further compress the image. The proposed NCS algorithm increases the compression performance and decreases the energy utilization of the sensor nodes with high fidelity. Moreover, it achieved a minimum end to end delay of 1074.46 ms at the average bit rate of 4.40 bpp and peak signal to noise ratio of 48.06 on the applied test images. On comparing with state-of-art methods, the proposed method maintains a better tradeoff between compression efficiency and reconstructed image quality.

[1]  Francesco Marcelloni,et al.  Reducing Power Consumption in Wireless Sensor Networks Using a Novel Approach to Data Aggregation , 2008, Comput. J..

[2]  Mohamed Elhoseny,et al.  Optimal feature level fusion based ANFIS classifier for brain MRI image classification , 2018, Concurr. Comput. Pract. Exp..

[3]  Alhussein A. Abouzeid,et al.  Power aware image transmission in energy constrained wireless networks , 2004, Proceedings. ISCC 2004. Ninth International Symposium on Computers And Communications (IEEE Cat. No.04TH8769).

[4]  Satish Kumar,et al.  Next century challenges: scalable coordination in sensor networks , 1999, MobiCom.

[5]  Karen O. Egiazarian,et al.  Lossless and near lossless compression of real color filter array data , 2008, IEEE Transactions on Consumer Electronics.

[6]  Irad Ben-Gal,et al.  On the use of data compression measures to analyze robust designs , 2005, IEEE Transactions on Reliability.

[7]  Sariga Arjunan,et al.  A survey on unequal clustering protocols in Wireless Sensor Networks , 2017, J. King Saud Univ. Comput. Inf. Sci..

[8]  CongDuc Pham Communication performances of IEEE 802.15.4 wireless sensor motes for data-intensive applications: A comparison of WaspMote, Arduino MEGA, TelosB, MicaZ and iMote2 for image surveillance , 2014, J. Netw. Comput. Appl..

[9]  Tarek R. Sheltami,et al.  Data compression techniques in Wireless Sensor Networks , 2016, Future Gener. Comput. Syst..

[10]  Deborah Estrin,et al.  Energy-Efficient Image Compression for Resource-Constrained Platforms , 2009, IEEE Transactions on Image Processing.

[11]  You-Chiun Wang,et al.  Data Compression Techniques in Wireless Sensor Networks , 2010 .

[12]  T. Vengattaraman,et al.  A new lossless neighborhood indexing sequence (NIS) algorithm for data compression in wireless sensor networks , 2019, Ad Hoc Networks.

[13]  Mohamed Elhoseny,et al.  Automatic removal of complex shadows from indoor videos using transfer learning and dynamic thresholding , 2017, Comput. Electr. Eng..

[14]  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..

[15]  Donald A. Adjeroh,et al.  Priority-based rate control for service differentiation and congestion control in wireless multimedia sensor networks , 2009, Comput. Networks.

[16]  John Anderson,et al.  Wireless sensor networks for habitat monitoring , 2002, WSNA '02.

[17]  Robert D. Nowak,et al.  Distributed image compression for sensor networks using correspondence analysis and super-resolution , 2003, Proceedings 2003 International Conference on Image Processing (Cat. No.03CH37429).

[18]  Deborah Estrin,et al.  Cyclops: in situ image sensing and interpretation in wireless sensor networks , 2005, SenSys '05.

[19]  P. Dhavachelvan,et al.  A survey on data compression techniques: From the perspective of data quality, coding schemes, data type and applications , 2021, J. King Saud Univ. Comput. Inf. Sci..

[20]  Huaming Wu,et al.  Energy efficient distributed JPEG2000 image compression in multihop wireless networks , 2004, 2004 4th Workshop on Applications and Services in Wireless Networks, 2004. ASWN 2004..

[21]  Bo Chen,et al.  Low-complexity and energy efficient image compression scheme for wireless sensor networks , 2008, Comput. Networks.

[22]  Abdelhamid Helali,et al.  Images compression techniques for wireless sensor network applications , 2015, Int. J. Speech Technol..

[23]  Sung Wook Baik,et al.  Raspberry Pi assisted face recognition framework for enhanced law-enforcement services in smart cities , 2017, Future Gener. Comput. Syst..

[24]  Peter W. Tse,et al.  A Novel, Fast, Reliable Data Transmission Algorithm for Wireless Machine Health Monitoring , 2009, IEEE Transactions on Reliability.

[25]  Mario Di Francesco,et al.  Energy conservation in wireless sensor networks: A survey , 2009, Ad Hoc Networks.

[26]  Francis Lepage,et al.  Tiny block-size coding for energy-efficient image compression and communication in wireless camera sensor networks , 2011, Signal Process. Image Commun..

[27]  Mariusz Duplaga,et al.  Near-lossless energy-efficient image compression algorithm for wireless capsule endoscopy , 2017, Biomed. Signal Process. Control..

[28]  Deborah Estrin,et al.  SCALE: A tool for Simple Connectivity Assessment in Lossy Environments , 2003 .

[29]  Shish Ahmad,et al.  Energy Efficient Image Compression Techniques in WSN , 2018 .

[30]  Alhussein A. Abouzeid,et al.  Energy efficient distributed image compression in resource-constrained multihop wireless networks , 2005, Comput. Commun..

[31]  Anthony Rowe,et al.  CMUcam3: An Open Programmable Embedded Vision Sensor , 2007 .

[32]  Paul S. Fisher,et al.  Image quality measures and their performance , 1995, IEEE Trans. Commun..

[33]  Mohamed Elhoseny,et al.  Deep learning model for real-time image compression in Internet of Underwater Things (IoUT) , 2020, Journal of Real-Time Image Processing.

[34]  Xueming Qian,et al.  Efficient and Robust Image Coding and Transmission Based on Scrambled Block Compressive Sensing , 2018, IEEE Transactions on Multimedia.

[35]  Eero P. Simoncelli,et al.  Image quality assessment: from error visibility to structural similarity , 2004, IEEE Transactions on Image Processing.

[36]  R. Amutha,et al.  Energy-efficient low bit rate image compression in wavelet domain for wireless image sensor networks , 2015 .

[37]  Jochen H. Schiller,et al.  Wireless Sensor Network for habitat monitoring on Skomer Island , 2010, IEEE Local Computer Network Conference.