全部 标题 作者
关键词 摘要

OALib Journal期刊
ISSN: 2333-9721
费用:99美元

查看量下载量

相关文章

更多...

A Plant Image Compression Algorithm Based on Wireless Sensor Network

DOI: 10.4236/jcc.2019.74005, PP. 53-64

Keywords: Wireless Sensor Network, JPEG, Quantization Table, Image Transmission, Algorithm

Full-Text   Cite this paper   Add to My Lib

Abstract:

This paper designs and implements an image transmission algorithm applied to plant information collection based on the wireless sensor network. It can effectively reduce the volume of transmitted data, low-energy, high-availability image compression algorithm. This algorithm mainly has two aspects of improvement measures: the first is to reduce the number of pixels that transmit images, from interlaced scanning to interlaced neighbor scanning; the second is to use JPEG image compression algorithm [1], changing the value of the quantization table in the algorithm [2]. After image compression, the image data volume is greatly reduced; the transmission efficiency is improved; and the problem of excessive data volume during image transmission is effectively solved.

References

[1]  Wang, Z.-F., Zhu, L., Zeng, C.-Y., Min, Q.-S. and Xia, D. (2018) Survey on Recompression Detection for Digital Images. Computer Science, 45, 20-29.
[2]  Douak, F., Benzid, R. and Benoudjit, N. (2011) Color Image Compression Algorithm Based on the DCT Transform Combined to an Adaptive Block Scanning. AEU-International Journal of Electronics and Communications, 65, 16-26.
https://doi.org/10.1016/j.aeue.2010.03.003
[3]  Gheorghiu, R. and Iordache, V. (2018) Use of Energy Efficient Sensor Networks to Enhance Dynamic Data Gathering Systems: A Comparative Study between Bluetooth and ZigBee. Sensors, 18, 1801.
https://doi.org/10.3390/s18061801
[4]  Feng, F., Liu, P.-X., Li, X.-Y. and Yan, N.-B. (2016) Research of Discrete Cosine Transform for Image Compression Algorithm. Computer Science, 43, 240-241 + 255.
[5]  Yang, P.Z., Wang, L.B., Pei, H.A.D., Qu, X. and Liang, S. (2019) Design of an Image Acquisition and Compression System with High Compression Ratio. Chinese Journal of Electron Devices, 42, 163-167.
[6]  Tongming, J.I. and Shengli, B. (2017) Application of JPEG2000 Image Compression Algorithm in Android Platform. Journal of Computer Applications, 37, 203-206.
[7]  Timofte, R., De Smet, V. and Van Gool, L. (2014) A+: Adjusted Anchored Neighborhood Regression for Fast Super-Resolution. Asian Conference on Computer Vision, Springer, Cham, 111-126.
[8]  Yang, C.Y. and Yang, M.H. (2013) Fast Direct Super-Resolution by Simple Functions. Proceedings of the IEEE International Conference on Computer Vision, Sydney, NSW, 1-8 December 2013, 561-568.
[9]  Chun, L., Kun, T., et al. (2018) Quality Assessment for Contrast-Distorted Images Based on Convolutional Neural Network. Microelectronics & Computer, 35, 84-88.
[10]  Movshon, J.A. and Kiorpes, L. (1988) Analysis of the Development of Spatial Contrast Sensitivity in Monkey and Human Infants. JOSAA, 5, 2166-2172.
https://doi.org/10.1364/JOSAA.5.002166
[11]  Yao, J.-C. (2011) Evaluation of Image Quality Characteristics Based on Human Eye’s Visual Contrast Sensitivity. Chinese Journal of Liquid Crystals and Displays, 26, 390-394.
https://doi.org/10.3788/YJYXS20112603.0390
[12]  Wang, J.-H., Wu, J., Zhang, C. and Cao, X.-J. (2019) Laplacian Pyramid Based Image Fusion for Use in HVS. Electronics Optics & Control, 26, 77-80 + 91.
[13]  Jia, R.-M. and Zheng, Q. (2018) Fractal Enhancement Algorithm Based on Frequency Characteristics of Human Eyes. Laser & Infrared, 48, 919-924.
[14]  Zeng, J.-Y., Xiao, D.-Q. and Lin, T.-Y. (2016) Design and Implementation of a Software System on Compressing Region of Interest of Agricultural Images. Modern Computer.

Full-Text

Contact Us

service@oalib.com

QQ:3279437679

WhatsApp +8615387084133