340 research outputs found

    Light field image processing : overview and research issues

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    Light field (LF) imaging first appeared in the computer graphics community with the goal of photorealistic 3D rendering [1]. Motivated by a variety of potential applications in various domains (e.g., computational photography, augmented reality, light field microscopy, medical imaging, 3D robotic, particle image velocimetry), imaging from real light fields has recently gained in popularity, both at the research and industrial level.peer-reviewe

    Light field image processing: an overview

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    Light field imaging has emerged as a technology allowing to capture richer visual information from our world. As opposed to traditional photography, which captures a 2D projection of the light in the scene integrating the angular domain, light fields collect radiance from rays in all directions, demultiplexing the angular information lost in conventional photography. On the one hand, this higher dimensional representation of visual data offers powerful capabilities for scene understanding, and substantially improves the performance of traditional computer vision problems such as depth sensing, post-capture refocusing, segmentation, video stabilization, material classification, etc. On the other hand, the high-dimensionality of light fields also brings up new challenges in terms of data capture, data compression, content editing, and display. Taking these two elements together, research in light field image processing has become increasingly popular in the computer vision, computer graphics, and signal processing communities. In this paper, we present a comprehensive overview and discussion of research in this field over the past 20 years. We focus on all aspects of light field image processing, including basic light field representation and theory, acquisition, super-resolution, depth estimation, compression, editing, processing algorithms for light field display, and computer vision applications of light field data

    Application for light field inpainting

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    Light Field (LF) imaging is a multimedia technology that can provide more immersive experience when visualizing a multimedia content with higher levels of realism compared to conventional imaging technologies. This technology is mainly promising for Virtual Reality (VR) since it displays real-world scenes in a way that users can experience the captured scenes in every position and every angle, due to its 4-dimensional LF representation. For these reasons, LF is a fast-growing technology, with so many topics to explore, being the LF inpainting the one that was explored in this dissertation. Image inpainting is an editing technique that allows synthesizing alternative content to fill in holes in an image. It is commonly used to fill missing parts in a scene and restore damaged images such that the modifications are correct and visually realistic. Applying traditional 2D inpainting techniques straightforwardly to LFs is very unlikely to result in a consistent inpainting in its all 4 dimensions. Usually, to inpaint a 4D LF content, 2D inpainting algorithms are used to inpaint a particular point of view and then 4D inpainting propagation algorithms propagate the inpainted result for the whole 4D LF data. Based on this idea of 4D inpainting propagation, some 4D LF inpainting techniques have been recently proposed in the literature. Therefore, this dissertation proposes to design and implement an LF inpainting application that can be used by the public that desire to work in this field and/or explore and edit LFs.Campos de luz é uma tecnologia multimédia que fornece uma experiência mais imersiva ao visualizar conteúdo multimédia com níveis mais altos de realismo, comparando a tecnologias convencionais de imagem. Esta tecnologia é promissora, principalmente para Realidade Virtual, pois exibe cenas capturadas do mundo real de forma que utilizadores as possam experimentar em todas as posições e ângulos, devido à sua representação em 4 dimensões. Por isso, esta é tecnologia em rápido crescimento, com tantos tópicos para explorar, sendo o inpainting o explorado nesta dissertação. Inpainting de imagens é uma técnica de edição, permitindo sintetizar conteúdo alternativo para preencher lacunas numa imagem. Comumente usado para preencher partes que faltam numa cena e restaurar imagens danificadas, de forma que as modificações sejam corretas e visualmente realistas. É muito improvável que aplicar técnicas tradicionais de inpainting 2D diretamente a campos de luz resulte num inpainting consistente em todas as suas 4 dimensões. Normalmente, para fazer inpainting num conteúdo 4D de campos de luz, os algoritmos de inpainting 2D são usados para fazer inpainting de um ponto de vista específico e, seguidamente, os algoritmos de propagação de inpainting 4D propagam o resultado do inpainting para todos os dados do campo de luz 4D. Com base nessa ideia de propagação de inpainting 4D, algumas técnicas foram recentemente propostas na literatura. Assim, esta dissertação propõe-se a conceber e implementar uma aplicação de inpainting de campos de luz que possa ser utilizada pelo público que pretenda trabalhar nesta área e/ou explorar e editar campos de luz

    Creating virtual models from uncalibrated camera views

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    The reconstruction of photorealistic 3D models from camera views is becoming an ubiquitous element in many applications that simulate physical interaction with the real world. In this paper, we present a low-cost, interactive pipeline aimed at non-expert users, that achieves 3D reconstruction from multiple views acquired with a standard digital camera. 3D models are amenable to access through diverse representation modalities that typically imply trade-offs between level of detail, interaction, and computational costs. Our approach allows users to selectively control the complexity of different surface regions, while requiring only simple 2D image editing operations. An initial reconstruction at coarse resolution is followed by an iterative refining of the surface areas corresponding to the selected regions

    Periodic patterns for resolution limit characterization of correlation plenoptic imaging

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    The measurement of the spatio-temporal correlations of light provides an interesting tool to overcome the traditional limitations of standard imaging, such as the strong trade-off between spatial resolution and depth of field. In particular, using correlation plenoptic imaging, one can detect both the spatial distribution and the direction of light in a scene, pushing both resolution and depth of field to the fundamental limit imposed by wave-optics. This allows one to perform refocusing of different axial planes and three-dimensional reconstruction without any spatial scanning. In the present work, we investigate the resolution limit in a particular correlation plenoptic imaging scheme, by considering periodic test patterns, which provide, through analytical results, a deeper insight in the resolution properties of this second-order imaging technique, also in comparison with standard imaging.Comment: 16 pages, 4 figure

    An object-based approach to image/video-based synthesis and processing for 3-D and multiview televisions

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    This paper proposes an object-based approach to a class of dynamic image-based representations called "plenoptic videos," where the plenoptic video sequences are segmented into image-based rendering (IBR) objects each with its image sequence, depth map, and other relevant information such as shape and alpha information. This allows desirable functionalities such as scalability of contents, error resilience, and interactivity with individual IBR objects to be supported. Moreover, the rendering quality in scenes with large depth variations can also be improved considerably. A portable capturing system consisting of two linear camera arrays was developed to verify the proposed approach. An important step in the object-based approach is to segment the objects in video streams into layers or IBR objects. To reduce the time for segmenting plenoptic videos under the semiautomatic technique, a new object tracking method based on the level-set method is proposed. Due to possible segmentation errors around object boundaries, natural matting with Bayesian approach is also incorporated into our system. Furthermore, extensions of conventional image processing algorithms to these IBR objects are studied and illustrated with examples. Experimental results are given to illustrate the efficiency of the tracking, matting, rendering, and processing algorithms under the proposed object-based framework. © 2009 IEEE.published_or_final_versio
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