COMPRESSED TRANSMISSION OF DEPTH MAPS IN 3D STREAM SERVICES FOR ROBOTICS & SURVEILLANCE
DOI:
https://doi.org/10.22159/ajpcr.2017.v10s1.19644Keywords:
Network transmission, Video sequences, Depth determinationAbstract
Building high end processing hardware for depth mapping in mobile robotics is a major drawback. The problem could be addressed by processing the
scene through one end and then streaming it to the other robotic mobile platforms or actuators to perform physical operations; thereby rendering
global depth map for all the arbitrary viewpoints of the robots. In this study, we present the algorithm for compressed transmission of depth maps
over a network and provide a synthetic viewpoint with low geometric distortions.
Downloads
References
Fehn C, Schuur K, Kauff P, Smolic A. Coding Results for EE4 in MPEG 3DAV. Vol. 9561. Pattaya: ISO/IEC JTC1/SC29/WG11 M; 2003.
Howard P, Kossentini F, Martins B, Forchhammer S, Rucklidge W. The emerging JBIG2 standard. IEEE Trans Circuits Syst Video Technol 2002;8(7):838-48.
Krishnamurthy R, Chai B, Tao H, Sethuraman S. Compression and transmission of depth maps for image-based rendering. In: Proceedings of International Conference on Image Processing. Vol. 3. IEEE; 2001.
p. 828-31.
Liu S, Lai P, Tian D, Gomila C, Chen C. Sparse dyadic mode for depth map compression. In: 17
IEEE International Conference on Image Processing (ICIP). IEEE; 2010. p. 3421-4.th
Morvan Y, de With P, Farin D. Platelet-based coding of depth maps for the transmission of multiview images. In: Proceedings of SPIE, Stereoscopic Displays and Applications. Vol. 6055; 2006. p. 93-100.
Sarkis M, Zia W, Diepold K. Fast depth map compression and meshing with compressed tritree. Computer Vision-ACCV 2009. Berlin: Springer; 2010. p. 44-55.
Shen G, Kim W, Ortega A, Lee J, Wey H. Edge-aware intra prediction for depth-map coding. In: Image Processing (ICIP), 2010 17 th IEEE International Conference on IEEE; 2010. p. 3393-6.
Arbelaez P, Maire M, Fowlkes C, Malik J. Contour detection and hierarchical image segmentation. IEEE Trans Pattern Anal Mach Intell 2011;33(5):898-916.
Everingham M, Van Gool L, Williams CK, Winn J, Zisserman A. The PASCAL Visual Object Classes Challenge 2008 (VOC2008). Available from: http://www.pascalnetwork.org/challenges/VOC/voc2008.
Shotton J, Winn J, Rother C, Criminisi A. Textonboost: Joint appearance,shape and context modeling for multi-class object recognition and segmentation. In: ECCV. Heidelberg: Springer; 2006.
Silberman N, Fergus R. Indoor scene segmentation using a structured light sensor. In: IEEE Workshop on 3D Representation and Recognition (3dRR); 2011.
Rai A. Shell implementation of neural net over the UNIX environment for file management: A step towards automated operating system. J Oper Syst Dev Trends 2014;1(2):10-4.
Rai A. Dynamic pagination for efficient memory management over distributed computational architecture for swarm robotics. J Adv Shell Program 2014;1(2):1-4.
Rai A. Attribute based level adaptive thresholding algorithm (ABLATA) for image compression and transmission. J Math Comput Sci 2014;12:211-8.
Published
How to Cite
Issue
Section
The publication is licensed under CC By and is open access. Copyright is with author and allowed to retain publishing rights without restrictions.