General Hogel-Based Effective Perspective Image Segmentation and Mosaicking Method for Holographic Stereogram Printing

2019 ◽  
Vol 46 (12) ◽  
pp. 1209001
Author(s):  
樊帆 Fan Fan ◽  
闫兴鹏 Yan Xingpeng ◽  
李沛 Li Pei ◽  
张腾 Zhang Teng ◽  
韩超 Han Chao ◽  
...  
2020 ◽  
Vol 57 (12) ◽  
pp. 120901
Author(s):  
韩超 Han Chao ◽  
蒋晓瑜 Jiang Xiaoyu ◽  
樊帆 Fan Fan ◽  
王晨卿 Wang Chenqing ◽  
张腾 Zhang Teng ◽  
...  

2019 ◽  
Vol 9 (5) ◽  
pp. 920 ◽  
Author(s):  
Fan Fan ◽  
Xiaoyu Jiang ◽  
Xingpeng Yan ◽  
Jun Wen ◽  
Song Chen ◽  
...  

Effective perspective image segmentation and mosaicking (EPISM) method is an effective holographic stereogram printing method, but a mosaic misplacement of reconstruction image occurred when focusing away from the reconstruction image plane. In this paper, a method known as holographic element-based effective perspective image segmentation and mosaicking is proposed. Holographic element (hogel) correspondence is used in EPISM method as pixel correspondence is used in direct-writing digital holography (DWDH) method to generate effective perspective images segments. The synthetic perspective image for holographic stereogram printing is obtained by mosaicking all the effective perspective images segments. Optical experiments verified that the holographic stereogram printed by the proposed method can provide high-quality reconstruction imagery and solve the mosaic misplacement inherent in the EPISM method.


Author(s):  
Felipe Calderero ◽  
Ferran Marqués

This chapter addresses the automatic creation of simplified versions of the image, known as image segmentation or partition, preserving the most semantically relevant information of the image at different levels of analysis. From a semantic and practical perspective, image segmentation is a first and key step for image analysis and pattern recognition since region-based image representations provide a first level of abstraction and a reduction of the number of primitives, leading to a more robust estimation of parameters and descriptors. The proposed solution is based on an important class of hierarchical bottom-up segmentation approaches, known as region merging techniques. These approaches naturally provide a bottom-up hierarchy, more suitable when no a priori information about the image is available, and an excellent compromise between efficiency of computation and representation. The chapter is organized in two parts dealing with the following objectives: (i) provide an unsupervised solution to the segmentation of generic images; (ii) design a generic and scalable scheme to automatically fuse hierarchical segmentation results that increases the robustness and accuracy of the final solution.


2018 ◽  
Vol 45 (12) ◽  
pp. 1209002
Author(s):  
樊帆 Fan Fan ◽  
蒋晓瑜 Jiang Xiaoyu ◽  
王培阳 Wang Peiyang ◽  
陈祎贝 Chen Yibei ◽  
闫兴鹏 Yan Xingpeng

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