您好,欢迎来到中国测试科技资讯平台!

首页> 《中国测试》期刊 >本期导读>基于低复杂度自适应帧的WVSN视频编码方法

基于低复杂度自适应帧的WVSN视频编码方法

2490    2016-01-16

免费

全文售价

作者:吴国光, 刘桂雄, 周松斌

作者单位:华南理工大学机械与汽车工程学院, 广东 广州 510640


关键词:无线视频传感器网络; 视频编码; 低复杂度; 自适应


摘要:

针对WVSN视频节点资源受限与视频编码方法复杂度高等问题,提出一种基于低复杂度自适应帧的视频编码方法。由隔块-对角线差异值计算方法求得差异值,建立自适应帧传输机制,避免逐帧判断,减少计算量。帧内图像采用多边形DCT裁剪JPEG压缩,减少二维DCT计算复杂度。实验结果表明,该方法在保证视频质量前提下,能有效降低视频编码复杂度,与无裁剪JPEG图像压缩相比,当前帧、差分帧JPEG压缩DCT计算量分别减少9.4%、56.3%;与M-JPEG视频编码相比,平均PSNR减少3.1%情况下,平均文件大小显著减少55.0%。


WVSN video coding method based on low complexity self-adaptive frame

WU Guo-guang, LIU Gui-xiong, ZHOU Song-bin

School of Mechanical and Automotive Engineering, South China University of Technology, Guangzhou 510640, China

Abstract: For resolving the problem of constrained resources of node in WVSN and high complexity video coding, a video coding method based on low complexity self-adaptive frame was proposed.The difference value is calculated based on "interlaced-diagonal" method, and the type mechanism of the self-adaptive frame is established to avoid judging each frame to decrease the computation complexity.And intra-frame image coding is based on polygonal DCT pruning JPEG to decrease the complexity of 2D DCT.Simulation results indicate that on the premise of video quality, the proposed method can effectively decrease the complexity of video coding.Compared to JPEG without DCT pruning, the computation amount of DCT in current-frame and difference-frame are decreased by 9.4% and 56.3% respectively.Compared to M-JPEG, the average image size decreased by 55.0% while the average PSNR decreased by 3.1%.

Keywords: wireless video sensor network; video coding; low complexity; self-adaptation

2013, 39(3): 73-78  收稿日期: 2012-7-23;收到修改稿日期: 2012-9-29

基金项目: 中国博士后科学基金项目(2012M511562);广东省高等学校高层次人才项目(粤教师函[2010]79号文)

作者简介: 吴国光(1983-),男,广东梅州市人,博士研究生,主要从事先进传感与先进仪器研究。

参考文献

[1] Akyildiz I F, Melodia T, Chowdhury K R. A survey on wireless multimedia sensor networks[J]. Computer Networks,2007,51(4):921-960.
[2] Misra S, Reisslein M, Xue G L. A survey of multimedia streaming in wireless sensor networks[J]. IEEE Communicatons Surveys & Tutorials,2008,10(4):18-39.
[3] Puri R, Majumdar A, Ishwar P, et al. Distributed video coding in wireless sensor networks[J]. IEEE Signal Process Mag,2006(23):94-106.
[4] Pereira F, Torres L, Guillemot C, et al. Distributed video coding:selecting the most promising application scenarios[J]. Signal Process: Image Commmun,2008(23):339-352.
[5] Ye C H, Ramchandran K. Robust distributed multiview video compression for wireless camera networks[J]. IEEE Transactions on Image Processing,2010,19(4):995-1008.
[6] Lee D U, Kim H, Rahimi M, et al. Energy-efficient image compression for resource-constrained platforms[J]. IEEE Transactions on Image Processing,2010,18(9):2100-2113.
[7] Mammeri A, Khoumsi A, Ziou D, et al. Energy-aware JPEG for visual sensor networks[M]. MCSEAI,2008-Oran,Algeria:1-7.
[8] Mammeri A, Khoumsi A, Ziou D, et al. Modeling and adapting JPEG to the energy requirements of VSN[C]//Proceedings of 17th International Conference on Computer Communications and Networks: Virgin Islands,2008:1-6.
[9] Heyne B, Sun C C, Goetze J, et al. A computationally efficient high-quality cordic based DCT[C]//Proc Conf EUSIPCO:Florence Italy,2006.
[10] Lecuire V, Makkaoui L, Moureaux J M. Fast zonal DCT for energy conservation in wireless image sensor networks[J]. Electronics Letters,2012,48(2):125-127.
[11] Feng W, Kaiser E, Feng W C, et al. Panoptes: scalable low-power video sensor networking technologies[J]. ACM Transctions on Multimedia Computing, Communications and Applications,2005,1(2):151-167.
[12] Aghdasi H S, Abbaspour M, Moghadam M E, et al. An energy-efficient and high-quality video transmission architecture in wireless video-based sensor netowrk[J]. Sensors,2008(8):4529-4559.
[13] 刘桂雄,吴国光,谭勇. 一种基于多边形裁剪DCT的JPEG图像压缩方法[P].中国,201210131458.1.
[14] Dung T V, Nguyen T Q. Quality enhancement for motion JPEG using temporal redundancies[J]. IEEE Transactions on Circuits and Systems for Video Technology,2008,18(5): 609-619.